Extending Semantic and Episodic Memory to Support Robust Decision Making

Abstract

Our research focused on developing and evaluating general, effective, and efficient algorithms for learning of long-term knowledge in autonomous agents, as well as developing cognitive capabilities that exploit that learning. Our work has covered episodic memory, semantic memory, and procedural memory, integrated within a general cognitive architecture (Soar). For episodic memory, our research has led to significant improvements in the efficiency of storage (memory) and retrieval (time) through the exploitation of temporal contiguity, structural regularity, high cue structural selectivity, high temporal selectivity, low cue feature co-occurrence, resulting in no significant slowdown with experience: runs for days of real time (tens of millions of episodes), faster than real time. We evaluated our approach on multiple tasks (including mobile robotics, games, planning problems, linguistics) and for multiple cognitive capabilities.

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Document Details

Document Type
Technical Report
Publication Date
Jun 13, 2013
Accession Number
ADA586671

Entities

People

  • John E. Laird

Organizations

  • University of Michigan

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  • Artificial Intelligence
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  • AI & ML
  • Autonomy