A Unified Gradient-Descent/Clustering Architecture for Finite State Machine Induction

Das, Sreerupa, Mozer, Michael C.

Neural Information Processing Systems 

Researchers often try to understand-post hoc-representations that emerge in the hidden layers of a neural net following training. Interpretation is difficult because these representations are typically highly distributed and continuous. By "continuous," we mean that if one constructed a scatterplot over the hidden unit activity space of patterns obtained in response to various inputs, examination at any scale would reveal the patterns to be broadly distributed over the space.

Similar Docs  Excel Report  more

TitleSimilaritySource
None found