- Jun 2020
-
science.sciencemag.org science.sciencemag.org
-
Snyder-Mackler, N., Burger, J. R., Gaydosh, L., Belsky, D. W., Noppert, G. A., Campos, F. A., Bartolomucci, A., Yang, Y. C., Aiello, A. E., O’Rand, A., Harris, K. M., Shively, C. A., Alberts, S. C., & Tung, J. (2020). Social determinants of health and survival in humans and other animals. Science, 368(6493). https://doi.org/10.1126/science.aax9553
-
-
journals.sagepub.com journals.sagepub.com
-
Muthukrishna, M., Bell, A. V., Henrich, J., Curtin, C. M., Gedranovich, A., McInerney, J., & Thue, B. (2020). Beyond Western, Educated, Industrial, Rich, and Democratic (WEIRD) Psychology: Measuring and Mapping Scales of Cultural and Psychological Distance: Psychological Science. https://doi.org/10.1177/0956797620916782
-
-
www.nature.com www.nature.com
-
Guan, D., Wang, D., Hallegatte, S., Davis, S. J., Huo, J., Li, S., Bai, Y., Lei, T., Xue, Q., Coffman, D., Cheng, D., Chen, P., Liang, X., Xu, B., Lu, X., Wang, S., Hubacek, K., & Gong, P. (2020). Global supply-chain effects of COVID-19 control measures. Nature Human Behaviour, 1–11. https://doi.org/10.1038/s41562-020-0896-8
-
-
-
Kurzweil, R. (2020 May 19). AI-Powered Biotech Can Help Deploy a Vaccine In Record Time. Wired. https://www.wired.com/story/opinion-ai-powered-biotech-can-help-deploy-a-vaccine-in-record-time/
-
-
twitter.com twitter.com
-
The Sharing Scientist on Twitter
-
-
www.thelancet.com www.thelancet.com
-
Simpson, C. R., Thomas, B. D., Challen, K., De Angelis, D., Fragaszy, E., Goodacre, S., Hayward, A., Lim, W. S., Rubin, G. J., Semple, M. G., & Knight, M. (2020). The UK hibernated pandemic influenza research portfolio: Triggered for COVID-19. The Lancet Infectious Diseases, S1473309920303984. https://doi.org/10.1016/S1473-3099(20)30398-4
-
-
www.nature.com www.nature.com
-
Kraemer, M.U.G., Sadilek, A., Zhang, Q. et al. Mapping global variation in human mobility. Nat Hum Behav (2020). https://doi.org/10.1038/s41562-020-0875-0
-
-
ftalphaville.ft.com ftalphaville.ft.com
-
Is the “science” behind the lockdown any good? (n.d.). Financial Times. Retrieved June 2, 2020, from http://ftalphaville.ft.com/2020/05/21/1590091709000/It-s-all-very-well--following-the-science---but-is-the-science-any-good--/
-
- May 2020
-
-
1 June “too soon” to open schools, say top scientists. (n.d.). Tes. Retrieved May 31, 2020, from https://www.tes.com/news/coronavirus-1-june-too-soon-open-schools-say-top-scientists
-
-
www.thelancet.com www.thelancet.com
-
Verity, R., Okell, L., Dorigatti, I., Winskill, P., Whittaker, C., Walker, P., Donnelly, C., Ferguson, N., & Ghani, A. (2020). COVID-19 and the difficulty of inferring epidemiological parameters from clinical data – Authors’ reply. The Lancet Infectious Diseases, 0(0). https://doi.org/10.1016/S1473-3099(20)30443-6
-
-
www.thelancet.com www.thelancet.com
-
Wood, S. N., Wit, E. C., Fasiolo, M., & Green, P. J. (2020). COVID-19 and the difficulty of inferring epidemiological parameters from clinical data. The Lancet Infectious Diseases, 0(0). https://doi.org/10.1016/S1473-3099(20)30437-0
-
-
rs-delve.github.io rs-delve.github.io
-
Test, Trace, Isolate. (2020, May 27). Royal Society DELVE Initiative. http://rs-delve.github.io/reports/2020/05/27/test-trace-isolate.html
-
-
arxiv.org arxiv.org
-
Mancastroppa, M., Burioni, R., Colizza, V., & Vezzani, A. (2020). Active and inactive quarantine in epidemic spreading on adaptive activity-driven networks. ArXiv:2004.07902 [Cond-Mat, Physics:Physics]. http://arxiv.org/abs/2004.07902
-
-
github.com github.com
-
DataForScience/Epidemiology101. (2020). [Jupyter Notebook]. Data For Science. https://github.com/DataForScience/Epidemiology101 (Original work published 2020)
-
-
-
Lobato, E. J. C., Powell, M., Padilla, L., & Holbrook, C. (2020). Factors Predicting Willingness to Share COVID-19 Misinformation. https://doi.org/10.31234/osf.io/r4p5z
-
-
psyarxiv.com psyarxiv.com
-
Hertz, U. (2020). Cognitive learning processes account for asymmetries in adaptations to new social norms [Preprint]. PsyArXiv. https://doi.org/10.31234/osf.io/7thku
-
-
psyarxiv.com psyarxiv.com
-
Williams, A. E. (2020, April 20). The Global Response to COVID-19 as an Example of a One-Sided Problem Definition in the Absence of General Collective Intelligence. https://doi.org/10.31234/osf.io/emgxc
-
-
psyarxiv.com psyarxiv.com
-
Golino, H., Christensen, A. P., Moulder, R. G., Kim, S., & Boker, S. M. (2020, April 14). Modeling latent topics in social media using Dynamic Exploratory Graph Analysis: The case of the right-wing and left-wing trolls in the 2016 US elections. https://doi.org/10.31234/osf.io/tfs7c
-
-
psyarxiv.com psyarxiv.com
-
Zmigrod, L., Eisenberg, I. W., Bissett, P., Robbins, T. W., & Poldrack, R. (2020, April 14). A Data-Driven Analysis of the Cognitive and Perceptual Attributes of Ideological Attitudes. https://doi.org/10.31234/osf.io/dgaxr
-
-
-
Ford, J. (2020, April 15). The battle at the heart of British science over coronavirus | Free to read. https://www.ft.com/content/1e390ac6-7e2c-11ea-8fdb-7ec06edeef84
-
-
www.futurelearn.com www.futurelearn.com
-
FutureLearn. Pandemics, Modelling, and Policy—Online Course. https://www.futurelearn.com/courses/pandemics-modelling-and-policy
-
-
www.imperial.ac.uk www.imperial.ac.uk
-
Ferguson, N., Laydon, D., & Nedjati-Gilani, G. (2020). How can we help stop the COVID-19 pandemic? Biomedical Science Journal for Teens. https://www.imperial.ac.uk/media/imperial-college/medicine/mrc-gida/2020-04-28-SJK-Report-9.pdf
-
-
github.com github.com
-
Deepset-ai/haystack. (2020). [Python]. deepset. https://github.com/deepset-ai/haystack (Original work published 2019)
-
-
www.sciencedirect.com www.sciencedirect.com
-
Vanunu, Y., Hotaling, J. M., & Newell, B. R. (2020). Elucidating the differential impact of extreme-outcomes in perceptual and preferential choice. Cognitive Psychology, 119, 101274. https://doi.org/10.1016/j.cogpsych.2020.101274
-
-
www.thelancet.com www.thelancet.com
-
The Lancet Public Health, May 2020, Volume 5, Issue 5, Pages e235-e296. https://www.thelancet.com/journals/lanpub/issue/current
Tags
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Annotators
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arxiv.org arxiv.org
-
Katz, D. M., Coupette, C., Beckedorf, J., & Hartung, D. (2020). Complex Societies and the Growth of the Law. ArXiv:2005.07646 [Physics]. http://arxiv.org/abs/2005.07646
-
-
www.repository.cam.ac.uk www.repository.cam.ac.uk
-
Toxvaerd, F. M. O. (2020). Equilibrium Social Distancing [Working Paper]. Faculty of Economics, University of Cambridge. https://doi.org/10.17863/CAM.52489
-
-
psyarxiv.com psyarxiv.com
-
Fränken, J.-P., & Pilditch, T. (2020). Cascades across networks are sufficient for the formation of echo chambers: An agent-based model. https://doi.org/10.31234/osf.io/8rgkc
-
-
wellcomeopenresearch.org wellcomeopenresearch.org
-
Endo, A., Centre for the Mathematical Modelling of Infectious Diseases COVID-19 Working Group, Abbott, S., Kucharski, A. J., & Funk, S. (2020). Estimating the overdispersion in COVID-19 transmission using outbreak sizes outside China. Wellcome Open Research, 5, 67. https://doi.org/10.12688/wellcomeopenres.15842.1
-
-
www.jmir.org www.jmir.org
-
Farooq, A., Laato, S., & Islam, A. K. M. N. (2020). Impact of Online Information on Self-Isolation Intention During the COVID-19 Pandemic: Cross-Sectional Study. Journal of Medical Internet Research, 22(5), e19128. https://doi.org/10.2196/19128
-
-
www.washingtonpost.com www.washingtonpost.com
-
Stevens, H. & Muyskens, J. (2020 May 14). See how experts use disease modeling to predict coronavirus cases after states reopen. Washington Post. https://www.washingtonpost.com/graphics/2020/health/disease-modeling-coronavirus-cases-reopening/
-
-
science.sciencemag.org science.sciencemag.org
-
Cobey, S. (2020). Modeling infectious disease dynamics. Science, 368(6492), 713–714. https://doi.org/10.1126/science.abb5659
-
-
psyarxiv.com psyarxiv.com
-
Yu, Q., Salvador, C., Melani, I., Berg, M., & Kitayama, S. (2020, May 14). The lethal spiral: Racial segregation and economic disparity jointly exacerbate the COVID-19 fatality in large American cities. https://doi.org/10.31234/osf.io/xgbpy
-
-
covid19.gleamproject.org covid19.gleamproject.org
-
COVID-19 Modeling: Italy
-
-
science.sciencemag.org science.sciencemag.org
-
Salje, H., Tran Kiem, C., Lefrancq, N., Courtejoie, N., Bosetti, P., Paireau, J., Andronico, A., Hozé, N., Richet, J., Dubost, C.-L., Le Strat, Y., Lessler, J., Levy-Bruhl, D., Fontanet, A., Opatowski, L., Boelle, P.-Y., & Cauchemez, S. (2020). Estimating the burden of SARS-CoV-2 in France. Science, eabc3517. https://doi.org/10.1126/science.abc3517
-
-
-
Masuda, N., & Holme, P. (2020). Small inter-event times govern epidemic spreading on networks. Physical Review Research, 2(2), 023163. https://doi.org/10.1103/PhysRevResearch.2.023163
-
-
www.nyteknik.se www.nyteknik.se
-
Forskare: ”Se upp med komplexa coronamodeller – de kan överträffa verkligheten”. (2020 April 24). Ny Teknik. https://www.nyteknik.se/opinion/forskare-se-upp-med-komplexa-coronamodeller-de-kan-overtraffa-verkligheten-6994339
-
-
-
Riolo, M. A., & Newman, M. E. J. (2020). Consistency of community structure in complex networks. Physical Review E, 101(5), 052306. https://doi.org/10.1103/PhysRevE.101.052306
-
-
www.imperial.ac.uk www.imperial.ac.uk
-
New report models Italy’s potential exit strategy from COVID-19 lockdown (2020 May 05). Imperial News | Imperial College London. https://www.imperial.ac.uk/news/189351/new-report-models-italys-potential-exit/
-
-
www.medrxiv.org www.medrxiv.org
-
Buitrago-Garcia, D. C., Egli-Gany, D., Counotte, M. J., Hossmann, S., Imeri, H., Salanti, G., & Low, N. (2020). The role of asymptomatic SARS-CoV-2 infections: Rapid living systematic review and meta-analysis [Preprint]. Epidemiology. https://doi.org/10.1101/2020.04.25.20079103
-
-
psyarxiv.com psyarxiv.com
-
McElroy, E., Patalay, P., Moltrecht, B., Shevlin, M., Shum, A., Creswell, C., & Waite, P. (2020, May 8). Demographic and health factors associated with pandemic anxiety in the context of COVID-19. https://doi.org/10.31234/osf.io/2eksd
-
-
www.nature.com www.nature.com
-
Vespignani, A., Tian, H., Dye, C. et al. Modelling COVID-19. Nat Rev Phys (2020). https://doi.org/10.1038/s42254-020-0178-4
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- public health
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Annotators
URL
-
-
ai.googleblog.com ai.googleblog.com
-
Tsitsulin, A. & Perozzi B. Understanding the Shape of Large-Scale Data. (2020 May 05). Google AI Blog. http://ai.googleblog.com/2020/05/understanding-shape-of-large-scale-data.html
-
-
onlinelibrary.wiley.com onlinelibrary.wiley.com
-
Mehrotra, S., Rahimian, H., Barah, M., Luo, F., & Schantz, K. (2020 May 02). A model of supply-chain decisions for resource sharing with an application to ventilator allocation to combat COVID-19. Naval Research Logistics (NRL). https://doi.org/10.1002/nav.21905
-
-
psycnet.apa.org psycnet.apa.org
-
Can we count on parents to help their children learn at home? (2020, May 8). Evidence for Action. https://blogs.unicef.org/evidence-for-action/can-we-count-on-parents-to-help-their-children-learn-at-home/
-
-
-
Kaplan, E. H., & Forman, H. P. (2020). Logistics of Aggressive Community Screening for Coronavirus 2019. JAMA Health Forum, 1(5), e200565–e200565. https://doi.org/10.1001/jamahealthforum.2020.0565
-
-
-
Liu, L., Wang, X., Tang, S., & Zheng, Z. (2020). Complex social contagion induces bistability on multiplex networks. ArXiv:2005.00664 [Physics]. http://arxiv.org/abs/2005.00664
-
-
psyarxiv.com psyarxiv.com
-
Trueblood, J., Sussman, A., O'Leary, D., & Holmes, W. (2020, April 21). A Tale of Two Crises: Financial Fragility and Beliefs about the Spread of COVID-19. https://doi.org/10.31234/osf.io/xfrz3
-
-
www.economist.com www.economist.com
-
Countries are using apps and data networks to keep tabs on the pandemic. (2020 March 26). The Economist. https://www.economist.com/briefing/2020/03/26/countries-are-using-apps-and-data-networks-to-keep-tabs-on-the-pandemic?fsrc=newsletter&utm_campaign=the-economist-today&utm_medium=newsletter&utm_source=salesforce-marketing-cloud&utm_term=2020-05-07&utm_content=article-link-1
-
-
arxiv.org arxiv.org
-
Nguyen, C. T., Saputra, Y. M., Van Huynh, N., Nguyen, N.-T., Khoa, T. V., Tuan, B. M., Nguyen, D. N., Hoang, D. T., Vu, T. X., Dutkiewicz, E., Chatzinotas, S., & Ottersten, B. (2020). Enabling and Emerging Technologies for Social Distancing: A Comprehensive Survey. ArXiv:2005.02816 [Physics]. http://arxiv.org/abs/2005.02816
-
-
www.thelancet.com www.thelancet.com
-
Wells, C. R., Stearns, J. K., Lutumba, P., & Galvani, A. P. (2020). COVID-19 on the African continent. The Lancet Infectious Diseases, 0(0). https://doi.org/10.1016/S1473-3099(20)30374-1
-
-
www.thelancet.com www.thelancet.com
-
Graeden, E., Carlson, C., & Katz, R. (2020). Answering the right questions for policymakers on COVID-19. The Lancet Global Health, 0(0). https://doi.org/10.1016/S2214-109X(20)30191-1
-
-
www.bmj.com www.bmj.com
-
Response to “Modelling the pandemic”: Reconsidering the quality of evidence from epidemiological models. (2020). https://www.bmj.com/content/369/bmj.m1567/rr-0
-
-
www.nytimes.com www.nytimes.com
-
Bui, Q., Katz, J., Parlapiano, A., & Sanger-Katz, M. (2020, April 22). What 5 Coronavirus Models Say the Next Month Will Look Like. The New York Times. https://www.nytimes.com/interactive/2020/04/22/upshot/coronavirus-models.html
-
-
www.tandfonline.com www.tandfonline.com
-
Fenton, N. E., Neil, M., Osman, M., & McLachlan, S. (2020). COVID-19 infection and death rates: The need to incorporate causal explanations for the data and avoid bias in testing. Journal of Risk Research, 0(0), 1–4. https://doi.org/10.1080/13669877.2020.1756381
-
-
www.sciencemediacentre.org www.sciencemediacentre.org
-
Expert comments about herd immunity | Science Media Centre. (n.d.). Retrieved April 14, 2020, from https://www.sciencemediacentre.org/expert-comments-about-herd-immunity/
-
-
psyarxiv.com psyarxiv.com
-
Lengersdorff, L., Wagner, I., & Lamm, C. (2020, April 20). When implicit prosociality trumps selfishness: the neural valuation system underpins more optimal choices when learning to avoid harm to others than to oneself. https://doi.org/10.31234/osf.io/q6psx
-
-
psyarxiv.com psyarxiv.com
-
Barnby, J. M., Bell, V., Mehta, M., & Moutoussis, M. (2020, April 17). Reduction in social learning and policy uncertainty about intentional social threat underlies paranoia: evidence from modelling a modified serial dictator game. https://doi.org/10.31234/osf.io/jvx5y
-
-
easystats.github.io easystats.github.io
-
www.imperial.ac.uk www.imperial.ac.uk
-
Seth Flaxman, Swapnil Mishra, Axel Gandy et al. Estimating the number of infections and the impact of non-pharmaceutical interventions on COVID-19 in 11 European countries. Imperial College London (2020), doi:https://doi.org/10.25561/77731
-
-
-
Martins, A. C. R. (2020). Extremism definitions in opinion dynamics models. ArXiv:2004.14548 [Nlin, Physics:Physics]. http://arxiv.org/abs/2004.14548
-
-
www.fil.ion.ucl.ac.uk www.fil.ion.ucl.ac.uk
-
Friston, K. J., Parr, T., Zeidman, P., Razi, A., Flandin, G., Daunizeau, J., Hulme, O. J., Billig, A. J., Litvak, V., Moran, R. J., Price, C. J., & Lambert, C. (2020). Dynamic causal modelling of COVID-19. ArXiv:2004.04463 [q-Bio]. http://arxiv.org/abs/2004.04463
-
-
psyarxiv.com psyarxiv.com
-
Zinn, S., & Gnambs, T. (2020, April 18). Analyzing nonresponse in longitudinal surveys using Bayesian additive regression trees: A nonparametric event history analysis. https://doi.org/10.31234/osf.io/82c3w
-
-
www.thelancet.com www.thelancet.com
-
Zhang, J. et al. (2020, April 2). Evolving epidemiology and transmission dynamics of coronavirus disease 2019 outside Hubei province, China: a descriptive and modelling study. The Lancet: Infectious Diseases. https://doi.org/10.1016/S1473-3099(20)30230-9.
-
-
-
Interdonato, R., Magnani, M., Perna, D., Tagarelli, A., & Vega, D. (2020). Multilayer network simplification: Approaches, models and methods. ArXiv:2004.14808 [Physics]. http://arxiv.org/abs/2004.14808
-
-
psyarxiv.com psyarxiv.com
-
Segovia-Martín, J., & Tamariz, M. (2020, May 5). Testing early and late connectivity dynamics in the lab: an experiment using 4-agent micro-societies. https://doi.org/10.31234/osf.io/nuf78
-
-
www.sciencedirect.com www.sciencedirect.com
-
Hart, O. E., & Halden, R. U. (2020). Computational analysis of SARS-CoV-2/COVID-19 surveillance by wastewater-based epidemiology locally and globally: Feasibility, economy, opportunities and challenges. Science of The Total Environment, 730, 138875. https://doi.org/10.1016/j.scitotenv.2020.138875
-
-
arxiv.org arxiv.org
-
Müller, M., Derlet, P. M., Mudry, C., & Aeppli, G. (2020). Using random testing to manage a safe exit from the COVID-19 lockdown. ArXiv:2004.04614 [Cond-Mat, Physics:Physics, q-Bio]. http://arxiv.org/abs/2004.04614
-
-
link.aps.org link.aps.org
-
Krönke, J., Wunderling, N., Winkelmann, R., Staal, A., Stumpf, B., Tuinenburg, O. A., & Donges, J. F. (2020). Dynamics of tipping cascades on complex networks. Physical Review E, 101(4), 042311. https://doi.org/10.1103/PhysRevE.101.042311
-
- Apr 2020
-
-
Leitner, S. (2020, April 18). On the dynamics emerging from pandemics and infodemics. https://doi.org/10.31234/osf.io/nqru6
-
-
psyarxiv.com psyarxiv.com
-
Dai, B., Fu, D., Meng, G., Qi, L., & Liu, X. (2020, April 25). The effects of governmental and individual predictors on COVID-19 protective behaviors in China: a path analysis model. https://doi.org/10.31234/osf.io/hgzj9
-
-
-
Etilé, F., Johnston, D., Frijters, P., & Shields, M. (2020, April 16). Psychological Resilience to Major Socioeconomic Life Events. https://doi.org/10.31234/osf.io/vp48c
-
-
psyarxiv.com psyarxiv.com
-
Im, H., Ahn, C., Wang, P., & Chen, C. (2020, April 13). An Early Examination: Psychological, Health, and Economic Correlates and Determinants of Social Distancing Amidst COVID-19. https://doi.org/10.31234/osf.io/9ravu
-
-
-
Han, L., Lin, Z., Tang, M., Zhou, J., Zou, Y., & Guan, S. (2020). Impact of contact preference on social contagions on complex networks. Physical Review E, 101(4), 042308. https://doi.org/10.1103/PhysRevE.101.042308
-
-
doi.org doi.org
-
Gray, N., Calleja, D., Wimbush, A., Miralles-Dolz, E., Gray, A., De-Angelis, M., Derrer-Merk, E., Oparaji, B. U., Stepanov, V., Clearkin, L., & Ferson, S. (2020). “No test is better than a bad test”: Impact of diagnostic uncertainty in mass testing on the spread of Covid-19 [Preprint]. Epidemiology. https://doi.org/10.1101/2020.04.16.20067884
-
-
www.cdc.gov www.cdc.gov
-
CDC. (2020, February 11). Coronavirus Disease 2019 (COVID-19). Centers for Disease Control and Prevention. https://www.cdc.gov/coronavirus/2019-ncov/covid-data/forecasting-us.html
-
-
www.medrxiv.org www.medrxiv.org
-
Rossberg, Axel G, und Robert J. Knell. „How will this continue? Modelling interactions between the COVID-19 pandemic and policy responses“. medRxiv, 1. Januar 2020, 2020.03.30.20047597. https://doi.org/10.1101/2020.03.30.20047597.
-
-
bmcmedicine.biomedcentral.com bmcmedicine.biomedcentral.com
-
Whitty, C. J. M. (2015). What makes an academic paper useful for health policy? BMC Medicine, 13(1), 301. https://doi.org/10.1186/s12916-015-0544-8
-
-
cmmid.github.io cmmid.github.io
-
Russell, T.W., Hellewell, J., Abbott, S., Golding, N.,Gibbs, H., Jarvis, C.I., van Zandvoort, K., Flasche, S., Eggo, R., Edmunds, W.J., Kucharski., A.J. (2020, March 22). Using a delay-adjusted case fatality ratio to estimate under-reporting. CMMID Repository. https://cmmid.github.io/topics/covid19/global_cfr_estimates.html
-
-
twitter.com twitter.comTwitter1
-
journals.plos.org journals.plos.org
-
Garira W (2020) The research and development process for multiscale models of infectious disease systems. PLoS Comput Biol 16(4): e1007734. https://doi.org/10.1371/journal.pcbi.1007734
-
-
-
www.thelancet.com www.thelancet.com
-
Bayham, J. & Fenichel, E.P. (2020 April 3). Impact of school closures for COVID-19 on the US health-care workforce and net mortality: a modelling study. The Lancet. DOI: https://doi.org/10.1016/S2468-2667(20)30082-7.
-
-
arxiv.org arxiv.org
-
Lenormand, M., et al. (2020 April 3). On the importance of trip destination for modeling individual human mobility patterns. Cornell University. arXiv:2004.01435.
-
-
arxiv.org arxiv.org
-
El Shoghri, A., et al. (2020 April 03). How mobility patterns drive disease spread: A case study using public transit passenger card travel data. 2019 IEEE 20th International Symposium on "A World of Wireless, Mobile and Multimedia Networks". DOI:10.1109/WoWMoM.2019.8793018
-
-
arxiv.org arxiv.org
-
Liu, D., Clemente, L., Poirier, C., Ding, X., Chinazzi, M., Davis, J. T., Vespignani, A., & Santillana, M. (2020). A machine learning methodology for real-time forecasting of the 2019-2020 COVID-19 outbreak using Internet searches, news alerts, and estimates from mechanistic models. ArXiv:2004.04019 [Cs, q-Bio, Stat]. http://arxiv.org/abs/2004.04019
-
-
www.bmj.com www.bmj.com
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Wynants, L., Van Calster, B., Bonten, M. M. J., Collins, G. S., Debray, T. P. A., De Vos, M., Haller, M. C., Heinze, G., Moons, K. G. M., Riley, R. D., Schuit, E., Smits, L. J. M., Snell, K. I. E., Steyerberg, E. W., Wallisch, C., & van Smeden, M. (2020). Prediction models for diagnosis and prognosis of covid-19 infection: Systematic review and critical appraisal. BMJ, m1328. https://doi.org/10.1136/bmj.m1328
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www.thelancet.com www.thelancet.com
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Xu, S., & Li, Y. (2020). Beware of the second wave of COVID-19. The Lancet, S014067362030845X. https://doi.org/10.1016/S0140-6736(20)30845-X
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Resnick, B. (2020 April 10). Why it's so hard to see into the future of Covid-19. Vox. https://www.vox.com/science-and-health/2020/4/10/21209961/coronavirus-models-covid-19-limitations-imhe
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www.nature.com www.nature.com
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Adam, D. (2020 April 02). Special report: The simulations driving the world's response to COVID-19. Nature. doi: 10.1038/d41586-020-01003-6.
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www.thelancet.com www.thelancet.com
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Viner, R. M., et al. (2020 April 06). School closure and management practices during coronavirus outbreaks including COVID-19: a rapid systematic review. The Lancet. DOI: https://doi.org/10.1016/S2352-4642(20)30095-X.
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psyarxiv.com psyarxiv.com
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Plohl, N., & Musil, B. (2020, April 6). Modeling compliance with COVID-19 prevention guidelines: The critical role of trust in science. https://doi.org/10.31234/osf.io/6a2cx
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science.sciencemag.org science.sciencemag.org
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Kissler, S. M., Tedijanto, C., Goldstein, E., Grad, Y. H., & Lipsitch, M. (2020). Projecting the transmission dynamics of SARS-CoV-2 through the postpandemic period. Science, eabb5793. https://doi.org/10.1126/science.abb5793
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www.cell.com www.cell.com
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Callaghan, S. (2020). COVID-19 Is a Data Science Issue. Patterns, 100022. https://doi.org/10.1016/j.patter.2020.100022
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cmmid.github.io cmmid.github.io
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Russel, T.W., Hellewell, J., Abbott, S., Golding, N., Gibbs, H., Jarvis, C.I., van Zandvoort, K., Flasche, S., Eggo, R., Edmunds, W.J., Kucharski, A.J., (2020). Using a delay-adjusted case fatality ratio to estimate under-reporting. CMMID. https://cmmid.github.io/topics/covid19/severity/global_cfr_estimates.html
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Punn, N. S., Sonbhadra, S. K., & Agarwal, S. (2020). COVID-19 Epidemic Analysis using Machine Learning and Deep Learning Algorithms [Preprint]. Health Informatics. https://doi.org/10.1101/2020.04.08.20057679
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www.washingtonpost.com www.washingtonpost.com
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Bump, P., Wan, W. (2020 April 8). A leading model now estimates tens of thousands fewer covid-19 deaths by summer. The Washington Post. https://www.washingtonpost.com/politics/2020/04/08/leading-model-now-estimates-tens-thousands-fewer-covid-19-deaths-by-summer/
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www.nesta.org.uk www.nesta.org.uk
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Cretu, C. (2020 April 15). Signals in the noise. Nesta. https://www.nesta.org.uk/report/signals-noise/
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doi.org doi.org
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Atchison, C. J., Bowman, L., Vrinten, C., Redd, R., Pristera, P., Eaton, J. W., & Ward, H. (2020). Perceptions and behavioural responses of the general public during the COVID-19 pandemic: A cross-sectional survey of UK Adults [Preprint]. Public and Global Health. https://doi.org/10.1101/2020.04.01.20050039
Tags
- COVID-19
- statistics
- response
- self-isolation
- minority
- prevention
- transmission dynamics
- demographics
- cross-sectional
- UK
- modeling
- is:preprint
- lang:en
- risk perception
- handwashing
- perception
- data collection
- survey
- government
- quarentine
- adult
- behavior
- policy
- lockdown
- face mask
- economy
- social distancing
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Ting, C., Palminteri, S., Lebreton, M., & Engelmann, J. B. (2020, March 25). The elusive effects of incidental anxiety on reinforcement-learning. https://doi.org/10.31234/osf.io/7d4tc MLA
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www.nsf.gov www.nsf.gov
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twitter.com twitter.com
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ReconfigBehSci en Twitter: “‘Proper science without the drag’ – Move to the medical model of journal review: ‘Yes/No’ decision. We suggest the temporary adoption of this model for crisis-relevant material by journals. [happening already, but potentially even better models: @Meta_psy and @F1000Research?]” / Twitter. (n.d.). Twitter. Retrieved April 15, 2020, from https://twitter.com/scibeh/status/1242094075312046082
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thesocietypages.org thesocietypages.org
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Pages, T. S. (n.d.). What are COVID-19 Models Modeling? - The Society Pages. Retrieved April 9, 2020, from https://thesocietypages.org/specials/what-are-covid-19-models-modeling/
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www.gleamproject.org www.gleamproject.org
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COVID-19 Modeling. (n.d.). Retrieved April 8, 2020, from https://www.gleamproject.org/covid-19#about
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www.pnas.org www.pnas.org
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Stavroglou, S. K., Pantelous, A. A., Stanley, H. E., & Zuev, K. M. (2020). Unveiling causal interactions in complex systems. Proceedings of the National Academy of Sciences, 117(14), 7599–7605. https://doi.org/10.1073/pnas.1918269117
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advances.sciencemag.org advances.sciencemag.org
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Chirikov, I., Semenova, T., Maloshonok, N., Bettinger, E., & Kizilcec, R. F. (2020). Online education platforms scale college STEM instruction with equivalent learning outcomes at lower cost. Science Advances, 6(15), eaay5324. https://doi.org/10.1126/sciadv.aay5324
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www.nature.com www.nature.com
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Gog, J. R. (2020). How you can help with COVID-19 modelling. Nature Reviews Physics, 1–2. https://doi.org/10.1038/s42254-020-0175-7
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Local file Local file
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DP-3T/documents. (n.d.). GitHub. Retrieved April 8, 2020, from https://github.com/DP-3T/documents
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covid19.gleamproject.org covid19.gleamproject.org
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COVID-19 MODELING IN THE UNITED STATES. (n.d.). Retrieved April 17, 2020, from https://covid19.gleamproject.org/#
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jamanetwork.com jamanetwork.com
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Jewell, N. P., Lewnard, J. A., & Jewell, B. L. (2020). Predictive Mathematical Models of the COVID-19 Pandemic: Underlying Principles and Value of Projections. JAMA. https://doi.org/10.1001/jama.2020.6585
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trello.com trello.com
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Collective Intelligence and COVID-19 | Trello. (n.d.). Retrieved April 20, 2020, from https://trello.com/b/STdgEhvX/collective-intelligence-and-covid-19
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- Feb 2020
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osf.io osf.io
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Reverse engineering a bronze cannon from theLaBelleshipwreck
The benefit to archaeology, museum curation, and other areas presented by computer modeling and 3D printing cannot be overstated. These technologies allow us to explore artifacts, sites, and more, in ways that we never could before.
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- Jan 2020
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www.digitalocean.com www.digitalocean.com
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First sighting of Jupyter Notebook (that I recall).
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- Aug 2019
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www.sanalabs.com www.sanalabs.com
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formalized: knowledge retention
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- Apr 2019
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behave appropriately
Students feed off of adult behavior. If they see that a teacher is having positive interactions and supporting others, they will respond accordingly. If they see the opposite, they will think that mal-adaptive behavior and negative interactions are appropriate.
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- Mar 2019
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plato.stanford.edu plato.stanford.edu
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such as scope, simplicity, fruitfulness, accuracy
Theories can be measured according to multiple metrics. The current default appears to be predictive accuracy, but this lists others, such as scope. If theory A predicts better but narrower and theory B predicts worse (in A's domain) but much more broadly, which is a better theory?
Others might be related to simplicity and whatnot. For example, if a theory is numerical but not explanatory (such as scaling laws or the results of statistical fitting) this theory might be useful but not satisfying.
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- Feb 2019
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dougengelbart.org dougengelbart.org
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The Two Sides of the H-LAM/T System
When I view this diagram, I am reminded of Robert Rosen's Modeling Relation, an image of which is here The Modeling Relation grew out of research in Relational Biology which was the first mathematical biology to recognize that relations among organism components and between those components and the environment are key to understanding complex adaptive systems.
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- Nov 2018
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en.wikipedia.org en.wikipedia.org
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github.com github.com
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Local file Local file
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For the second, we could try to detect inconsistencies, eitherby inspecting samples of the class hierarchy
Yes, that's what I do when doing quality work on the taxonomy (with the tool wdtaxonomy)
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Possible relations between Items
This only includes properties of data-type item?! It should be made more clear because the majority of Wikidata classes has other data types.
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A KG typically spans across several domains and is built on topof a conceptual schema, orontology, which defines what types of entities (classes) are allowed inthe graph, alongside the types ofpropertiesthey can have
Wikidata differs from typical KG as it is not build on top of classes (entity types). Any item (entity) can be connected by any property. Wikidata's only strict "classes" in the sense of KG classes are its data types (item, lemma, monolingual string...).
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- Jul 2018
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course-computational-literary-analysis.netlify.com course-computational-literary-analysis.netlify.com
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Having heard the story of the past, my next inquiries (still inquiries after Rachel!) advanced naturally to the present time. Under whose care had she been placed after leaving Mr. Bruff’s house? and where was she living now?
Blake's account of Rachel is clearly distinct form the other narrators because of their romantic past. He mentions her frequently throughout his narrative. I would like to run a frequency count the number of times he mentions Rachel compared tot he rest of the narratives in the book. I wonder if it is possible to isolate the discussions of Rachel in each character's narrative and then do some topic modeling with the extracted texts to examine how Rachel is discussed by each character.
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- Mar 2018
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onlinelibrary.wiley.com onlinelibrary.wiley.com
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WALLACE: GUI for R scripted species modeling.
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- Aug 2017
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tedunderwood.com tedunderwood.com
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Computer scientists make LDA seem complicated because they care about proving that their algorithms work.
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onlinelibrary.wiley.com onlinelibrary.wiley.com
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Thus, predicting species responses to novel climates is problematic, because we often lack sufficient observational data to fully determine in which climates a species can or cannot grow (Figure 3). Fortunately, the no-analog problem only affects niche modeling when (1) the envelope of observed climates truncates a fundamental niche and (2) the direction of environmental change causes currently unobserved portions of a species' fundamental niche to open up (Figure 5). Species-level uncertainties accumulate at the community level owing to ecological interactions, so the composition and structure of communities in novel climate regimes will be difficult to predict. Increases in atmospheric CO2 should increase the temperature optimum for photosynthesis and reduce sensitivity to moisture stress (Sage and Coleman 2001), weakening the foundation for applying present empirical plant–climate relationships to predict species' responses to future climates. At worst, we may only be able to predict that many novel communities will emerge and surprises will occur. Mechanistic ecological models, such as dynamic global vegetation models (Cramer et al. 2001), are in principle better suited for predicting responses to novel climates. However, in practice, most such models include only a limited number of plant functional types (and so are not designed for modeling species-level responses), or they are partially parameterized using modern ecological observations (and thus may have limited predictive power in no-analog settings).
Very nice summary of some of the challenges to using models of contemporary species distributions for forecasting changes in distribution.
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In eastern North America, the high pollen abundances of temperate tree taxa (Fraxinus, Ostrya/Carpinus, Ulmus) in these highly seasonal climates may be explained by their position at the edge of the current North American climate envelope (Williams et al. 2006; Figure 3). This pattern suggests that the fundamental niches for these taxa extend beyond the set of climates observed at present (Figure 3), so that these taxa may be able to sustain more seasonal regimes than exist anywhere today (eg Figure 1), as long as winter temperatures do not fall below the −40°C mean daily freezing limit for temperate trees (Sakai and Weiser 1973).
Recognizing where species are relative to the observed climate range will be important for understanding their potential response to changes in climate. This information should be included when using distribution models to predict changes in species distributions. Ideally this information could be used in making point estimates, but at a minimum understanding its impact on uncertainty would be a step forward.
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- Apr 2017
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demo.clab.cs.cmu.edu demo.clab.cs.cmu.edu
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if your goal is word representation learning,you should consider both NCE and negative sampling
Wonder if anyone has compared these two approaches
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- Jan 2017
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onlinelibrary.wiley.com onlinelibrary.wiley.com
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To simulate equilibrium sagebrush cover under projected future climate, we applied average projected changes in precipitation and temperature to the observed climate time series. For each GCM and RCP scenario combination, we calculated average precipitation and temperature over the 1950–2000 time period and the 2050–2098 time period. We then calculated the absolute change in temperature between the two time periods (ΔT) and the proportional change in precipitation between the two time periods (ΔP) for each GCM and RCP scenario combination. Lastly, we applied ΔT and ΔP to the observed 28-year climate time series to generate a future climate time series for each GCM and RCP scenario combination. These generated climate time series were used to simulate equilibrium sagebrush cover.
This is an interesting approach to forecasting future climate values with variation.
- Use GCMs to predict long-term change in climate condition
- Add this change to the observed time-series
- Simulate off of this adjusted time-series
Given short-term variability may be important, that it is not the focus of the long-term GCM models, and that the goal here is modeling equilibrum (not transitional) dynamics, this seems like a nice compromise approach to capture both long-term and short-term variation in climate.
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Our process model (in Eq. (2)) includes a log transformation of the observations (log(yt − 1)). Thus, our model does not accommodate zeros. Fortunately, we had very few instances where pixels had 0% cover at time t − 1 (n = 47, which is 0.01% of the data set). Thus, we excluded those pixels from the model fitting process. However, when simulating the process, we needed to include possible transitions from zero to nonzero percent cover. We fit an intercept-only logistic model to estimate the probability of a pixel going from zero to nonzero cover: yi∼Bernoulli(μi)(8)logit(μi)=b0(9)where y is a vector of 0s and 1s corresponding to whether a pixel was colonized (>0% cover) or not (remains at 0% cover) and μi is the expected probability of colonization as a function of the mean probability of colonization (b0). We fit this simple model using the “glm” command in R (R Core Team 2014). For data sets in which zeros are more common and the colonization process more important, the same spatial statistical approach we used for our cover change model could be applied and covariates such as cover of neighboring cells could be included.
This seems like a perfectly reasonable approach in this context. As models like this are scaled up to larger spatial extents the proportion of locations with zero abundance will increase and so generalizing the use of this approach will require a different approach to handling zeros.
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Our approach models interannual changes in plant cover as a function of seasonal climate variables. We used daily historic weather data for the center of our study site from the NASA Daymet data set (available online: http://daymet.ornl.gov/). The Daymet weather data are interpolated between coarse observation units and capture some spatial variation. We relied on weather data for the centroid of our study area.
This seems to imply that only a single environmental time-series was used across all of the spatial locations. This is reasonable given the spatial extent of the data, but it will be necessary to allow location specific environmental time-series to allow this to be generalized to large spatial extents.
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Because SDMs typically rely on occurrence data, their projections of habitat suitability or probability of occurrence provide little information on the future states of populations in the core of their range—areas where a species exists now and is expected to persist in the future (Ehrlén and Morris 2015).
The fact that most species distribution models treat locations within a species range as being of equivalent quality for the species regardless of whether there are 2 or 2000 individuals of that species is a core weakness of the occupancy based approach to modeling these problems. Approaches, like those in this paper, that attempt to address this weakness are really valuable.
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- Nov 2016
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journals.plos.org journals.plos.org
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Whilst the consensus method we used provided the best predictions under AUC assessment – seemingly confirming its potential for reducing model-based uncertainty in SDM predictions [58], [59] – its accuracy to predict changes in occupancy was lower than most single models. As a result, we advocate great care when selecting the ensemble of models from which to derive consensus predictions; as previously discussed by Araújo et al. [21], models should be chosen based on aspects of their individual performance pertinent to the research question being addressed, and not on the assumption that more models are better.
It's interesting that the ensembles perform best overall but more poorly for predicting changes in occupancy. It seems possible that ensembling multiple methods is basically resulting in a more static prediction, i.e., something closer to a naive baseline.
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Finally, by assuming the non-detection of a species to indicate absence from a given grid cell, we introduced an extra level of error into our models. This error depends on the probability of false absence given imperfect detection (i.e., the probability that a species was present but remained undetected in a given grid cell [73]): the higher this probability, the higher the risk of incorrectly quantifying species-climate relationships [73].
This will be an ongoing challenge for species distribution modeling, because most of the data appropriate for these purposes is not collected in such a way as to allow the straightforward application of standard detection probability/occupancy models. This could potentially be addressed by developing models for detection probability based on species and habitat type. These models could be built on smaller/different datasets that include the required data for estimating detectability.
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- Jul 2016
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earthobservatory.nasa.gov earthobservatory.nasa.gov
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Charney determined that the impracticality of Richardson’s methods could be overcome by using the new computers and a revised set of equations, filtering out sound and gravity waves in order to simplify the calculations and focus on the phenomena of most importance to predicting the evolution of continent-scale weather systems.
The complexity of the forecasting problem was initially overcome in the 1940's both by an improved rate of calculation (using computers) and by simplifying the models to focus on the most important factors.
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- Jun 2015
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The comparison between the model and the experts is based on the species distribution models (SMDs), not on actual species occurrences, so the observed difference could be due to weakness in the SDM predictions rather than the model outperforming the experts. The explanation for this choice in Footnote 4 is reasonable, but I wonder if it could be addressed by rarifying the sampling appropriately.
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