元标签:理论与框架

J. Joubert
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引用次数: 0

摘要

元标记(Meta-labeling)是一个机器学习(ML)层,它位于基本主要策略之上,可以帮助调整头寸大小,过滤掉假阳性信号,并改善夏普比率和最大收缩等指标。本文将几个出版物的知识整合到一个工作中,为从业者提供了一个明确的框架,以支持元标签在投资策略中的应用。本文解释了二元分类指标与策略绩效之间的关系,并回答了有关该技术的许多常见问题。作者还将元标签分解为三个组件,使用一个控制实验来展示每个组件如何帮助改进策略度量,以及在模型规范阶段应该考虑哪些类型的特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Meta-Labeling: Theory and Framework
Meta-labeling is a machine learning (ML) layer that sits on top of a base primary strategy to help size positions, filter out false-positive signals, and improve metrics such as the Sharpe ratio and maximum drawdown. This article consolidates the knowledge of several publications into a single work, providing practitioners with a clear framework to support the application of meta-labeling to investment strategies. The relationships between binary classification metrics and strategy performance are explained, alongside answers to many frequently asked questions regarding the technique. The author also deconstructs meta-labeling into three components, using a controlled experiment to show how each component helps to improve strategy metrics and what types of features should be considered in the model specification phase.
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