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The Limits of Complexity: Why Feature Engineering Beats Deep Learning in Investor Flow Prediction

The Limits of Complexity: Why Feature Engineering Beats Deep Learning in Investor Flow Prediction ArXiv ID: 2601.07131 “View on arXiv” Authors: Sungwoo Kang Abstract The application of machine learning to financial prediction has accelerated dramatically, yet the conditions under which complex models outperform simple alternatives remain poorly understood. This paper investigates whether advanced signal processing and deep learning techniques can extract predictive value from investor order flows beyond what simple feature engineering achieves. Using a comprehensive dataset of 2.79 million observations spanning 2,439 Korean equities from 2020–2024, we apply three methodologies: \textit{“Independent Component Analysis”} (ICA) to recover latent market drivers, \textit{“Wavelet Coherence”} analysis to characterize multi-scale correlation structure, and \textit{“Long Short-Term Memory”} (LSTM) networks with attention mechanisms for non-linear prediction. Our results reveal a striking finding: a parsimonious linear model using market capitalization-normalized flows (``Matched Filter’’ preprocessing) achieves a Sharpe ratio of 1.30 and cumulative return of 272.6%, while the full ICA-Wavelet-LSTM pipeline generates a Sharpe ratio of only 0.07 with a cumulative return of $-5.1%$. The raw LSTM model collapsed to predicting the unconditional mean, achieving a hit rate of 47.5% – worse than random. We conclude that in low signal-to-noise financial environments, domain-specific feature engineering yields substantially higher marginal returns than algorithmic complexity. These findings establish important boundary conditions for the application of deep learning to financial prediction. ...

January 12, 2026 · 2 min · Research Team

Heterogeneous Trader Responses to Macroeconomic Surprises: Simulating Order Flow Dynamics

Heterogeneous Trader Responses to Macroeconomic Surprises: Simulating Order Flow Dynamics ArXiv ID: 2505.01962 “View on arXiv” Authors: Haochuan Wang Abstract Understanding how market participants react to shocks like scheduled macroeconomic news is crucial for both traders and policymakers. We develop a calibrated data generation process DGP that embeds four stylized trader archetypes retail, pension, institutional, and hedge funds into an extended CAPM augmented by CPI surprises. Each agents order size choice is driven by a softmax discrete choice rule over small, medium, and large trades, where utility depends on risk aversion, surprise magnitude, and liquidity. We aim to analyze each agent’s reaction to shocks and Monte Carlo experiments show that higher information, lower aversion agents take systematically larger positions and achieve higher average wealth. Retail investors under react on average, exhibiting smaller allocations and more dispersed outcomes. And ambient liquidity amplifies the sensitivity of order flow to surprise shocks. Our framework offers a transparent benchmark for analyzing order flow dynamics around macro releases and suggests how real time flow data could inform news impact inference. ...

May 4, 2025 · 2 min · Research Team