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Publications [#284249] of Rebecca Willett
search www.ee.duke.edu.Papers Published
- Hall, EC; Willett, RM, Online learning of neural network structure from spike trains,
International IEEE/EMBS Conference on Neural Engineering : [proceedings]. International IEEE EMBS Conference on Neural Engineering, vol. 2015-July
(January, 2015),
pp. 930-933, ISSN 1948-3546, ISBN 9781467363891 [doi]
(last updated on 2019/05/05)
Abstract: © 2015 IEEE.Cascading series of events are a salient feature of neural networks, where neuron spikes may stimulate or inhibit spike activity in other neurons. Only individual spike times associated with each neuron are observed, usually without knowledge of the underlying relationships among neurons. This paper addresses the challenge of tracking how spikes within such networks stimulate or influence future events. The proposed approach is an online learning framework well-suited to streaming data, using a multivariate Hawkes point process model to encapsulate autoregressive features of observed events within the network. Recent work on online learning in dynamic environments is leveraged not only to exploit the dynamics within the underlying network, but also to track that network structure as it evolves. Regret bounds and experimental results demonstrate that the proposed method performs nearly as well as an oracle or batch algorithm.
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