Incremental Slow Feature Analysis: Adaptive and Episodic Learning from High-Dimensional Input Streams
Kompella, Varun Raj, Luciw, Matthew, Schmidhuber, Juergen
–arXiv.org Artificial Intelligence
Our novel incremental version of SFA (IncSFA) combines incremental Principal Components Analysis and Minor Components Analysis. Unlike standard batch-based SFA, IncSFA adapts along with non-stationary environments, is amenable to episodic training, is not corrupted by outliers, and is covariance-free. These properties make IncSFA a generally useful unsupervised preprocessor for autonomous learning agents and robots. In IncSFA, the CCIPCA and MCA updates take the form of Hebbian and anti-Hebbian updating, extending the biological plausibility of SFA. In both single node and deep network versions, IncSFA learns to encode its input streams (such as high-dimensional video) by informative slow features representing meaningful abstract environmental properties. It can handle cases where batch SFA fails.
arXiv.org Artificial Intelligence
Dec-9-2011
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