Predictive Models Parameter Space Compression Underlies Emergent
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, 604 (2013); 342 Science et al. Benjamin B. Machta Predictive Models Parameter Space Compression Underlies Emergent Theories and This copy is for your personal, non-commercial use only. clicking here. colleagues, clients, or customers by , you can order high-quality copies for your If you wish to distribute this article to others here. following the guidelines can be obtained by Permission to republish or repurpose articles or portions of articles ): November 1, 2013 www.sciencemag.org (this information is current as of The following resources related to this article are available online at http://www.sciencemag.org/content/342/6158/604.full.html version of this article at: including high-resolution figures, can be found in the online Updated information and services, http://www.sciencemag.org/content/suppl/2013/10/30/342.6158.604.DC1.html can be found at: Supporting Online Material http://www.sciencemag.org/content/342/6158/604.full.html#ref-list-1 , 8 of which can be accessed free: cites 33 articles This article
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Parameter space compression underlies emergent theories and predictive models.
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