An Explainable Market Integrity Monitoring System with Multi-Source Attention Signals and Transparent Scoring
- URL: http://arxiv.org/abs/2601.15304v1
- Date: Sat, 10 Jan 2026 22:48:57 GMT
- Title: An Explainable Market Integrity Monitoring System with Multi-Source Attention Signals and Transparent Scoring
- Authors: Sandeep Neela,
- Abstract summary: AIMM-X is a monitoring pipeline that combines market-style signals with public attention signals to surface time windows that merit analyst review.<n>We provide an end-to-end, reproducible implementation that downloads data, constructs attention features, builds unified panels, detects windows, computes component signals, and generates summary figures/tables.<n>Our goal is not to label manipulation, but to provide a practical, auditable screening tool that supports downstream investigation by compliance teams, exchanges, or researchers.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Market integrity monitoring is difficult because suspicious price/volume behavior can arise from many benign mechanisms, while modern detection systems often rely on opaque models that are hard to audit and communicate. We present AIMM-X, an explainable monitoring pipeline that combines market microstructure-style signals derived from OHLCV time series with multi-source public attention signals (e.g., news and online discussion proxies) to surface time windows that merit analyst review. The system detects candidate anomalous windows using transparent thresholding and aggregation, then assigns an interpretable integrity score decomposed into a small set of additive components, allowing practitioners to trace why a window was flagged and which factors drove the score. We provide an end-to-end, reproducible implementation that downloads data, constructs attention features, builds unified panels, detects windows, computes component signals, and generates summary figures/tables. Our goal is not to label manipulation, but to provide a practical, auditable screening tool that supports downstream investigation by compliance teams, exchanges, or researchers.
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