This is a summary of links recently featured on Quantocracy as of Thursday, 07/16/2026. To see our most recent links, visit the Quant Mashup. Read on readers!
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State-Space Models for Price: CryptoMamba vs Transformers (Skeptical) [Aligrithm]Every few years a new architecture gets pointed at Bitcoin and a paper announces it won. This round it is Mamba, the selective state-space model that is genuinely reshaping language and vision. Sepehri, Mehradfar, Soltanolkotabi, and Avestimehr at USC built CryptoMamba, a compact Mamba network that reads 14 days of Bitcoin OHLCV and predicts the next day's close. The numbers are real and they
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How quants separate edge from noise [Trading the Breaking]In this episode of House of Quants, listeners will discover: How quants separate genuine edge from market noise: The episode explains why financial markets are difficult to diagnose and how researchers distinguish persistent information from randomness, temporary anomalies, and misleading patterns. How data problems create false strategies: It examines survivorship bias, timestamp errors,
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Can AI Do Financial Research? [Quantpedia]Large language models are already capable of summarizing financial research, but are they ready to conduct it? In their latest paper, researchers from Google, Boston College, and Columbia introduce a framework where a large language model doesnt just fetch datait acts as an autonomous AI research agent capable of navigating the hypothesis discovery loop. By placing an LLM within a
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The Mechanism Survives, the Magnitude Doesn t [Tommi Johnsen]Here is the thesis, stated before the evidence: when we re-measured seven months of work on a pipeline that reads financial headlines and asks whether each one should move a stock, the mechanisms we had found held up. The magnitudes almost never did, including, twice, the magnitudes we ourselves had computed and believed. The pipelines job is narrow. For roughly 850 tickers a night, it reads