Learning to Apply Schematic Knowledge to Novel Instances

02/24/2019
by   Catherine Chen, et al.
0

Humans have schematic knowledge of how certain types of events unfold (e.g. coffeeshop visits) that can readily be generalized to new instances of those events. Schematic knowledge allows humans to perform role-filler binding, the task of associating schematic roles (e.g. "barista") with specific fillers (e.g. "Bob"). Here we examined whether and how recurrent neural networks learn to do this. We procedurally generated stories from an underlying generative graph, and trained networks on role-filler binding question-answering tasks. We tested whether networks can learn to maintain filler information on their own, and whether they can generalize to fillers that they have not seen before. We studied networks by analyzing their behavior and decoding their memory states. We found that a network's success in learning role-filler binding depends on both the breadth of roles introduced during training, and the network's memory architecture. In our decoding analyses, we observed a close relationship between the information we could decode from various parts of network architecture, and the information the network could recall.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/12/2023

A Memory Model for Question Answering from Streaming Data Supported by Rehearsal and Anticipation of Coreference Information

Existing question answering methods often assume that the input content ...
research
01/25/2018

Finding ReMO (Related Memory Object): A Simple Neural Architecture for Text based Reasoning

To solve the text-based question and answering task that requires relati...
research
02/13/2019

Which Neural Network Architecture matches Human Behavior in Artificial Grammar Learning?

In recent years artificial neural networks achieved performance close to...
research
10/04/2016

Revisiting Role Discovery in Networks: From Node to Edge Roles

Previous work in network analysis has focused on modeling the mixed-memb...
research
05/30/2023

KEYword based Sampling (KEYS) for Large Language Models

Question answering (Q/A) can be formulated as a generative task (Mitra, ...
research
09/14/2021

Space Time Recurrent Memory Network

We propose a novel visual memory network architecture for the learning a...
research
04/08/2019

Providing Advanced Access to Historical War Memoirs Through the Identification of Events, Participants and Roles

The progressive digitization of historical archives provides new, often ...

Please sign up or login with your details

Forgot password? Click here to reset