AI RESEARCH
Absorbing Complexity: An Interaction-Native Knowledge Harness for Financial LLM Agents
arXiv CS.AI
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ArXi:2606.01886v1 Announce Type: new Financial AI agents often fail for a simple reason: they make users carry the complexity. A user must repeatedly restate goals, risk preferences, portfolio context, past judgments, and shifting market assumptions, while the agent answers, retrieves, acts, and forgets. In finance, this is not just inconvenient. In tasks such as market analysis, copy-trading review, and trade preparation, forgotten context and stale memory can create latency, repeated errors, weak auditability, and unsafe decisions.