STCELGMLMay 24, 2018

Dynamic Advisor-Based Ensemble (dynABE): Case study in stock trend prediction of critical metal companies

arXiv:1805.12111v47 citations
Originality Incremental advance
AI Analysis

This addresses stock prediction for investors in critical metal companies, but it is incremental as it builds on existing ensemble methods with domain-specific adaptations.

The paper tackled stock trend prediction for cobalt-related companies by introducing the Dynamic Advisor-Based Ensemble (dynABE) framework, which achieved a best-case misclassification error of 31.12% and an annualized absolute return of 359.55% with zero maximum drawdown.

Stock trend prediction is a challenging task due to the market's noise, and machine learning techniques have recently been successful in coping with this challenge. In this research, we create a novel framework for stock prediction, Dynamic Advisor-Based Ensemble (dynABE). dynABE explores domain-specific areas based on the companies of interest, diversifies the feature set by creating different "advisors" that each handles a different area, follows an effective model ensemble procedure for each advisor, and combines the advisors together in a second-level ensemble through an online update strategy we developed. dynABE is able to adapt to price pattern changes of the market during the active trading period robustly, without needing to retrain the entire model. We test dynABE on three cobalt-related companies, and it achieves the best-case misclassification error of 31.12% and an annualized absolute return of 359.55% with zero maximum drawdown. dynABE also consistently outperforms the baseline models of support vector machine, neural network, and random forest in all case studies.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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