Thinking Fast and Laterally: Multi-Agentic Approach for Reasoning about Uncertain Emerging Events
This paper introduces lateral thinking to implement System-2 reasoning capabilities in AI systems, focusing on anticipatory and causal reasoning under uncertainty. We present a framework for systematic generation and modeling of lateral thinking queries and evaluation datasets. We introduce Streamin...
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Zusammenfassung: | This paper introduces lateral thinking to implement System-2 reasoning
capabilities in AI systems, focusing on anticipatory and causal reasoning under
uncertainty. We present a framework for systematic generation and modeling of
lateral thinking queries and evaluation datasets. We introduce Streaming
Agentic Lateral Thinking (SALT), a multi-agent framework designed to process
complex, low-specificity queries in streaming data environments. SALT
implements lateral thinking-inspired System-2 reasoning through a dynamic
communication structure between specialized agents. Our key insight is that
lateral information flow across long-distance agent interactions, combined with
fine-grained belief management, yields richer information contexts and enhanced
reasoning. Preliminary quantitative and qualitative evaluations indicate SALT's
potential to outperform single-agent systems in handling complex lateral
reasoning tasks in a streaming environment. |
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DOI: | 10.48550/arxiv.2412.07977 |