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Dial M—for Markets: Brain‑Scanning and Steering LLMs for Finance

TL;DR A new paper shows how to insert a sparse, interpretable layer into an LLM to expose plain‑English concepts (e.g., sentiment, risk, timing) and steer them like dials without retraining. In finance news prediction, these interpretable features outperform final‑layer embeddings and reveal that sentiment, market/technical cues, and timing drive most short‑horizon alpha. Steering also debiases optimism, lifting Sharpe by nudging the model negative on sentiment. Why this matters (and what’s new) Finance teams have loved LLMs’ throughput but hated their opacity. This paper demonstrates a lightweight path to transparent performance: ...

September 1, 2025 · 4 min · Zelina
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Mirror, Signal, Trade: How Self‑Reflective Agent Teams Outperform in Backtests

The Takeaway A new paper proposes TradingGroup, a five‑agent, self‑reflective trading team with a dynamic risk module and an automated data‑synthesis pipeline. In backtests on five US stocks, the framework beats rule‑based, ML, RL, and prior LLM agents. The differentiator isn’t a fancier model; it’s the workflow design: agents learn from their own trajectories, and the system continuously distills those trajectories into fine‑tuning data. What’s actually new here? Most “LLM trader” projects look similar: sentiment, fundamentals, a forecaster, and a decider. TradingGroup’s edge comes from three design choices: ...

August 26, 2025 · 5 min · Zelina
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Wall Street’s New Intern: How LLMs Are Redefining Financial Intelligence

The financial industry has always prided itself on cold precision. For decades, quantitative models and spreadsheets dominated boardrooms and trading desks. But that orthodoxy is now under siege. Not from another statistical breakthrough, but from something surprisingly human-like: Large Language Models (LLMs). Recent research shows a dramatic shift in how AI—particularly LLMs like GPT-4 and LLaMA—is being integrated across financial workflows. Far from just summarizing news or answering earnings call questions, LLMs are now organizing entire investment pipelines, fine-tuning themselves on proprietary data, and even collaborating as autonomous financial agents. A recent survey by Mahdavi et al. (2025) categorized over 70 state-of-the-art systems into four distinct architectural frameworks, offering us a lens through which to assess the future of financial AI. ...

July 4, 2025 · 4 min · Zelina