Getting from Generative AI to Trustworthy AI: What LLMs might learn from Cyc
Doug Lenat, Gary Marcus

TL;DR
This paper discusses the limitations of current generative AI, proposes a hybrid approach combining large language models with symbolic reasoning like Cyc, to achieve trustworthy, interpretable, and logically sound AI systems.
Contribution
It introduces a framework for integrating LLMs with symbolic reasoning systems like Cyc to enhance trustworthiness and interpretability of AI.
Findings
Cyc can reason in higher order logic in real time.
Hybrid AI approaches can improve trustworthiness and interpretability.
Explicit knowledge and rules enable step-by-step reasoning with provenance.
Abstract
Generative AI, the most popular current approach to AI, consists of large language models (LLMs) that are trained to produce outputs that are plausible, but not necessarily correct. Although their abilities are often uncanny, they are lacking in aspects of reasoning, leading LLMs to be less than completely trustworthy. Furthermore, their results tend to be both unpredictable and uninterpretable. We lay out 16 desiderata for future AI, and discuss an alternative approach to AI which could theoretically address many of the limitations associated with current approaches: AI educated with curated pieces of explicit knowledge and rules of thumb, enabling an inference engine to automatically deduce the logical entailments of all that knowledge. Even long arguments produced this way can be both trustworthy and interpretable, since the full step-by-step line of reasoning is always available,…
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Taxonomy
TopicsTopic Modeling · Semantic Web and Ontologies · Natural Language Processing Techniques
