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(Neural Computation. 2004;16:1887-1915.)
© 2004 The MIT Press


Letter

Fair Attribution of Functional Contribution in Artificial and Biological Networks

Alon Keinan

keinanak{at}post.tau.ac.il, School of Computer Sciences, Tel-Aviv University, Tel-Aviv, Israel

Ben Sandbank

sandban{at}post.tau.ac.il, School of Computer Sciences, Tel-Aviv University, Tel-Aviv, Israel

Claus C. Hilgetag

c.hilgetag{at}iu-bremen.de, School of Engineering and Science, International University Bremen, Bremen, Germany

Isaac Meilijson

isaco{at}post.tau.ac.il, School of Mathematical Sciences, Tel-Aviv University, Tel-Aviv, Israel

Eytan Ruppin

ruppin{at}post.tau.ac.il, School of Computer Sciences and School of Medicine, Tel-Aviv University, Tel-Aviv, Israel

This letter presents the multi-perturbation Shapley value analysis (MSA), an axiomatic, scalable, and rigorous method for deducing causal function localization from multiple perturbations data. The MSA, based on fundamental concepts from game theory, accurately quantifies the contributions of network elements and their interactions, overcoming several shortcomings of previous function localization approaches. Its successful operation is demonstrated in both the analysis of a neurophysiological model and of reversible deactivation data. The MSA has a wide range of potential applications, including the analysis of reversible deactivation experiments, neuronal laser ablations, and transcranial magnetic stimulation "virtual lesions," as well as in providing insight into the inner workings of computational models of neurophysiological systems.




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