Ensemble Meta-Labeling

Dennis Thumm, P. Barucca, J. Joubert
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Abstract

This study systematically investigates different ensemble methods for meta-labeling in finance and presents a framework to facilitate the selection of ensemble learning models for this purpose. Experiments were conducted on the components of information advantage and modeling for false positives to discover whether ensembles were better at extracting and detecting regimes and whether they increased model efficiency. The authors demonstrate that ensembles are especially beneficial when the underlying data consist of multiple regimes and are nonlinear in nature. The authors’ framework serves as a starting point for further research. They suggest that the use of different fusion strategies may foster model selection. Finally, the authors elaborate on how additional applications, such as position sizing, may benefit from their framework.
合奏Meta-Labeling
本研究系统地探讨了金融中元标签的不同集成方法,并提出了一个框架,以方便为此目的选择集成学习模型。对信息优势和假阳性建模的组成部分进行了实验,以发现集成是否在提取和检测制度方面更好,以及它们是否提高了模型效率。作者证明,当底层数据由多个区域组成并且本质上是非线性的时,集成特别有益。作者的框架可以作为进一步研究的起点。他们认为,使用不同的融合策略可能会促进模型选择。最后,作者详细说明了其他应用程序(如头寸大小)如何从他们的框架中受益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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