Knowledge Discovery from Layered Neural Networks based on Non-negative Task Decomposition

05/18/2018
by   Chihiro Watanabe, et al.
0

Interpretability has become an important issue in the machine learning field, along with the success of layered neural networks in various practical tasks. Since a trained layered neural network consists of a complex nonlinear relationship between large number of parameters, we failed to understand how they could achieve input-output mappings with a given data set. In this paper, we propose the non-negative task decomposition method, which applies non-negative matrix factorization to a trained layered neural network. This enables us to decompose the inference mechanism of a trained layered neural network into multiple principal tasks of input-output mapping, and reveal the roles of hidden units in terms of their contribution to each principal task.

READ FULL TEXT

page 8

page 10

research
10/03/2018

Interpreting Layered Neural Networks via Hierarchical Modular Representation

Interpreting the prediction mechanism of complex models is currently one...
research
07/20/2022

Fixed Points of Cone Mapping with the Application to Neural Networks

We derive conditions for the existence of fixed points of cone mappings ...
research
03/01/2017

Modular Representation of Layered Neural Networks

Layered neural networks have greatly improved the performance of various...
research
04/13/2018

Understanding Community Structure in Layered Neural Networks

A layered neural network is now one of the most common choices for the p...
research
10/08/2018

Detecting Memorization in ReLU Networks

We propose a new notion of `non-linearity' of a network layer with respe...
research
09/09/2014

Deep Unfolding: Model-Based Inspiration of Novel Deep Architectures

Model-based methods and deep neural networks have both been tremendously...
research
09/01/2021

Acceleration Method for Learning Fine-Layered Optical Neural Networks

An optical neural network (ONN) is a promising system due to its high-sp...

Please sign up or login with your details

Forgot password? Click here to reset