Towards Intelligent Agents that Learn to Reason and Communicate

Abstract

We propose to explore how to create intelligent agents that learn by reading, in order to perform commonsensereasoning. Commonsense reasoning is crucial for intelligent systems: It is part of the shared background in working with human partners, and provides a foundation for future learning. It requires massive amounts of knowledge, far beyond the scale of what can be encoded by hand. Thus learning by reading is a crucial step towards creating such broadly capable agents. Our hypotheses are: (1) qualitative representations are a crucial part of commonsense knowledge and (2) analogical reasoning and learning provides robustness in reasoning, plus human-like learning of complex relational structures. Unlike deep learning systems, for example, analogical learning systems can handle relational structures such as arguments, proofs, and plans, while learning with orders of magnitude less data. This research should help pave the way for intelligent systems that can interact with, and learn from, people using natural modalities, as well as make progress on understanding the nature of human cognition. Using the Companion cognitive architecture, we propose to explore the following ideas:1. Knowledge Integration. We will explore how systems should integrate new knowledge into what they already know, scrutinizing it for inconsistencies and implications, as people seem to do. The accuracy of knowledge will be estimated by using it to reason and tracking the correctness of answers to identify where problems are. Re-reading to find alternate interpretations will also be explored, as a means of improving the accuracy of subsequent reading as well.2. Learning to Communicate Better. Our recent progress on learning constructions via analogical generalizationsuggests that integrating analogy deeper into semantic interpretation could help make natural language systems that are more adaptable and flexible. We will explore co-learning of language and reasoning, using question/answer pairs to derive what interpretations should be drawn from a question and what patterns of plausible inference should be used in constructing answers. We will explore the role of analogy in natural language generation, essentially inverting the mappings between syntax and meaning learned in constructions, to communicate a system~s explanations to its human partners.

Document Details

Document Type
DoD Grant Award
Publication Date
Jan 04, 2017
Source ID
N000141712092

Entities

People

  • Ken Forbus

Organizations

  • Northwestern University
  • Office of Naval Research
  • United States Navy

Tags

Fields of Study

  • Computer science

Readers

  • Agent-Based Social Robotics and Mobile-Assisted Learning in Virtual Environments.
  • Computational Linguistics
  • Theoretical Analysis.

Technology Areas

  • AI & ML
  • AI & ML - Neural Networks