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Combinatorial Reasoning: Selecting Reasons in Generative AI Pipelines via Combinatorial OptimizationRecent Large Language Models (LLMs) have demonstrated impressive capabilities at tasks that require human intelligence and are a significant step towards human-like artificial intelligence (AI). Yet the performance of LLMs at reasoning tasks have been subpar and the reasoning capability of LLMs is a matter of significant debate. While it has been shown that the choice of the prompting technique to the LLM can alter its performance on a multitude of tasks, including reasoning, the best performing techniques require human-made prompts with the knowledge of the tasks at hand. We introduce a framework for what we call Combinatorial Reasoning (CR), a fully-automated prompting method, where reasons are sampled from an LLM pipeline and mapped into a Quadratic Unconstrained Binary Optimization (QUBO) problem. The framework investigates whether QUBO solutions can be profitably used to select a useful subset of the reasons to construct a Chain-of-Thought style prompt. We explore the acceleration of CR with specialized solvers. We also investigate the performance of simpler zero-shot strategies such as linear majority rule or random selection of reasons. Our preliminary study indicates that coupling a combinatorial solver to generative AI pipelines is an interesting avenue for AI reasoning and elucidates design principles for future CR methods.
Document ID
20240006223
Acquisition Source
Ames Research Center
Document Type
Conference Paper
Authors
Mert Esencan
(Icosa Computing Inc. Oxford, United Kingdom)
Tarun Advaith Kumar
(Icosa Computing Inc.)
Ata Akbari Asanjan
(Universities Space Research Association Columbia, United States)
P Aaron Lott
(Universities Space Research Association Columbia, United States)
Masoud Mohseni
(Hewlett-Packard Labs)
Can Unlu
(Icosa Computing Inc.)
Davide Venturelli
(Universities Space Research Association Columbia, United States)
Alan Ho
(DataStax)
Date Acquired
May 15, 2024
Subject Category
Computer Systems
Meeting Information
Meeting: 21st International Conference on Principles of Knowledge Representation and Reasoning
Location: Hanoi
Country: VN
Start Date: November 2, 2024
End Date: November 8, 2024
Sponsors: Potassco Solutions, KR INC
Funding Number(s)
CONTRACT_GRANT: NNA16BD14C
OTHER: SAA2-403506
CONTRACT_GRANT: 1918549
Distribution Limits
Public
Copyright
Portions of document may include copyright protected material.
Technical Review
NASA Peer Committee
Keywords
combinatorial reasoning
large language models
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