paperarXivTrust 82 · PrimaryPublished 5d agoLive · 3d ago
When Summaries Distort Decisions: Information Fidelity in LLM-Compressed Financial Analysis
Financial decision-makers face more information than they can directly inspect, making context compression necessary. Yet when large language models (LLMs) compress financial source material, they can alter the investment judgment supported by the original source. We frame this problem as information fidelity: compression loses fidelity when it changes the decision induced by the source. In agentic systems, such losses may recur across intermediate steps and amplify throughout the decision process. Across financial filings and earnings-call transcripts, we find that LLM-based compression can p
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