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- W3111639496 abstract "Despite reaching a point of acceptance as a research tool across the geographical and social sciences, there remain significant methodological challenges for agent-based models. These include recognizing and simulating emergent phenomena, agent representation, construction of behavioral rules, and calibration and validation. While advances in individual-level data and computing power have opened up new research avenues, they have also brought with them a new set of challenges. This article reviews some of the challenges that the field has faced, the opportunities available to advance the state-of-the-art, and the outlook for the field over the next decade. We argue that although agent-based models continue to have enormous promise as a means of developing dynamic spatial simulations, the field needs to fully embrace the potential offered by approaches from machine learning to allow us to fully broaden and deepen our understanding of geographical systems." @default.
- W3111639496 created "2020-12-21" @default.
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- W3111639496 date "2020-12-04" @default.
- W3111639496 modified "2023-10-17" @default.
- W3111639496 title "Future Developments in Geographical Agent‐Based Models: Challenges and Opportunities" @default.
- W3111639496 cites W131437625 @default.
- W3111639496 cites W13731369 @default.
- W3111639496 cites W1494192115 @default.
- W3111639496 cites W1532379550 @default.
- W3111639496 cites W1604346757 @default.
- W3111639496 cites W1991788899 @default.
- W3111639496 cites W1996051491 @default.
- W3111639496 cites W2004550196 @default.
- W3111639496 cites W2006012747 @default.
- W3111639496 cites W2008688250 @default.
- W3111639496 cites W2036523230 @default.
- W3111639496 cites W2039742252 @default.
- W3111639496 cites W2045860903 @default.
- W3111639496 cites W2052611239 @default.
- W3111639496 cites W2058326502 @default.
- W3111639496 cites W2059091340 @default.
- W3111639496 cites W2069284367 @default.
- W3111639496 cites W2073017712 @default.
- W3111639496 cites W2078206416 @default.
- W3111639496 cites W2087054423 @default.
- W3111639496 cites W2100614660 @default.
- W3111639496 cites W2106112040 @default.
- W3111639496 cites W2107581696 @default.
- W3111639496 cites W2108559625 @default.
- W3111639496 cites W2125671709 @default.
- W3111639496 cites W2137265664 @default.
- W3111639496 cites W2140251882 @default.
- W3111639496 cites W2140456771 @default.
- W3111639496 cites W2151313061 @default.
- W3111639496 cites W2152974375 @default.
- W3111639496 cites W2152975739 @default.
- W3111639496 cites W2156006257 @default.
- W3111639496 cites W2157276885 @default.
- W3111639496 cites W2158335518 @default.
- W3111639496 cites W2167508872 @default.
- W3111639496 cites W2204468525 @default.
- W3111639496 cites W2218100818 @default.
- W3111639496 cites W2295062384 @default.
- W3111639496 cites W2304510735 @default.
- W3111639496 cites W2363930778 @default.
- W3111639496 cites W2464906373 @default.
- W3111639496 cites W2503975538 @default.
- W3111639496 cites W2513172296 @default.
- W3111639496 cites W2553838540 @default.
- W3111639496 cites W2590078953 @default.
- W3111639496 cites W2603590941 @default.
- W3111639496 cites W2612554069 @default.
- W3111639496 cites W2615547864 @default.
- W3111639496 cites W2619766566 @default.
- W3111639496 cites W2747289010 @default.
- W3111639496 cites W2769766842 @default.
- W3111639496 cites W2782598620 @default.
- W3111639496 cites W2796958650 @default.
- W3111639496 cites W2800142021 @default.
- W3111639496 cites W2889011686 @default.
- W3111639496 cites W2897641836 @default.
- W3111639496 cites W2902259002 @default.
- W3111639496 cites W2910064343 @default.
- W3111639496 cites W2929757102 @default.
- W3111639496 cites W2933113367 @default.
- W3111639496 cites W2938578532 @default.
- W3111639496 cites W2941059859 @default.
- W3111639496 cites W2941576393 @default.
- W3111639496 cites W2948390141 @default.
- W3111639496 cites W2951874054 @default.
- W3111639496 cites W2976301483 @default.
- W3111639496 cites W2980076044 @default.
- W3111639496 cites W2989606502 @default.
- W3111639496 cites W3003553016 @default.
- W3111639496 cites W3003765837 @default.
- W3111639496 cites W3022787740 @default.
- W3111639496 cites W3035661062 @default.
- W3111639496 cites W3038685664 @default.
- W3111639496 cites W3043075313 @default.
- W3111639496 cites W3102589702 @default.
- W3111639496 cites W4211155642 @default.
- W3111639496 cites W4214928630 @default.
- W3111639496 cites W4230023875 @default.
- W3111639496 cites W4246003469 @default.
- W3111639496 cites W4246158001 @default.
- W3111639496 cites W4248111217 @default.
- W3111639496 cites W596688237 @default.
- W3111639496 doi "https://doi.org/10.1111/gean.12267" @default.
- W3111639496 hasPubMedCentralId "https://www.ncbi.nlm.nih.gov/pmc/articles/7898830" @default.
- W3111639496 hasPubMedId "https://pubmed.ncbi.nlm.nih.gov/33678813" @default.
- W3111639496 hasPublicationYear "2020" @default.
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