A Context Alignment Pre-processor for Enhancing the Coherence of Human-LLM Dialog
Ding Wei

TL;DR
This paper introduces C.A.P., a pre-processing framework that improves dialogue coherence by aligning context through semantic expansion, temporal retrieval, and verification, enhancing human-LLM interactions.
Contribution
It proposes a novel pre-processing module for LLMs that enhances contextual understanding and dialogue coherence by integrating cognitive science principles.
Findings
C.A.P. effectively detects context deviations in dialogues.
The framework improves response relevance and coherence.
It offers a structured approach for dialogue recalibration.
Abstract
Large language models (LLMs) have made remarkable progress in generating fluent text, but they still face a critical challenge of contextual misalignment in long-term and dynamic dialogue. When human users omit premises, simplify references, or shift context abruptly during interactions with LLMs, the models may fail to capture their actual intentions, producing mechanical or off-topic responses that weaken the collaborative potential of dialogue. To address this problem, this paper proposes a computational framework called the Context Alignment Pre-processor (C.A.P.). Rather than operating during generation, C.A.P. functions as a pre-processing module between user input and response generation. The framework includes three core processes: (1) semantic expansion, which extends a user instruction to a broader semantic span including its premises, literal meaning, and implications; (2)…
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Taxonomy
TopicsSpeech and dialogue systems · Topic Modeling · AI in Service Interactions
