Reasoning with Memory Augmented Neural Networks for Language Comprehension

10/20/2016
by   Tsendsuren Munkhdalai, et al.
University of Massachusetts Medical School
0

Hypothesis testing is an important cognitive process that supports human reasoning. In this paper, we introduce a computational hypothesis testing approach based on memory augmented neural networks. Our approach involves a hypothesis testing loop that reconsiders and progressively refines a previously formed hypothesis in order to generate new hypotheses to test. We apply the proposed approach to language comprehension task by using Neural Semantic Encoders (NSE). Our NSE models achieve the state-of-the-art results showing an absolute improvement of 1.2 single and ensemble systems on standard machine comprehension benchmarks such as the Children's Book Test (CBT) and Who-Did-What (WDW) news article datasets.

READ FULL TEXT

page 12

page 13

08/28/2019

Stock Price Forecasting and Hypothesis Testing Using Neural Networks

In this work we use Recurrent Neural Networks and Multilayer Perceptrons...
06/15/2023

Optimal Hypothesis Testing Based on Information Theory

There has a major problem in the current theory of hypothesis testing in...
08/22/2015

Bayesian Hypothesis Testing for Block Sparse Signal Recovery

This letter presents a novel Block Bayesian Hypothesis Testing Algorithm...
04/24/2015

Local Variation as a Statistical Hypothesis Test

The goal of image oversegmentation is to divide an image into several pi...
06/13/2012

CT-NOR: Representing and Reasoning About Events in Continuous Time

We present a generative model for representing and reasoning about the r...

Please sign up or login with your details

Forgot password? Click here to reset