Response Characterization for Auditing Cell Dynamics in Long Short-term Memory Networks

09/11/2018
by   Ramin M. Hasani, et al.
2

In this paper, we introduce a novel method to interpret recurrent neural networks (RNNs), particularly long short-term memory networks (LSTMs) at the cellular level. We propose a systematic pipeline for interpreting individual hidden state dynamics within the network using response characterization methods. The ranked contribution of individual cells to the network's output is computed by analyzing a set of interpretable metrics of their decoupled step and sinusoidal responses. As a result, our method is able to uniquely identify neurons with insightful dynamics, quantify relationships between dynamical properties and test accuracy through ablation analysis, and interpret the impact of network capacity on a network's dynamical distribution. Finally, we demonstrate generalizability and scalability of our method by evaluating a series of different benchmark sequential datasets.

READ FULL TEXT

page 5

page 10

research
04/18/2018

Fast Weight Long Short-Term Memory

Associative memory using fast weights is a short-term memory mechanism t...
research
03/19/2019

NeuralHydrology - Interpreting LSTMs in Hydrology

Despite the huge success of Long Short-Term Memory networks, their appli...
research
02/17/2014

Does the D.C. Response of Memristors Allow Robotic Short-Term Memory and a Possible Route to Artificial Time Perception?

Time perception is essential for task switching, and in the mammalian br...
research
06/20/2019

testRNN: Coverage-guided Testing on Recurrent Neural Networks

Recurrent neural networks (RNNs) have been widely applied to various seq...
research
10/30/2015

Highway Long Short-Term Memory RNNs for Distant Speech Recognition

In this paper, we extend the deep long short-term memory (DLSTM) recurre...
research
11/05/2019

Test Metrics for Recurrent Neural Networks

Recurrent neural networks (RNNs) have been applied to a broad range of a...
research
01/19/2018

Evaluating neural network explanation methods using hybrid documents and morphological prediction

We propose two novel paradigms for evaluating neural network explanation...

Please sign up or login with your details

Forgot password? Click here to reset