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基于多步凸优化方法的高维稀疏指数跟踪

High-dimensional sparse index tracking based on a multi-step convex optimization approach

Quantitative Finance · 2023
被引 3
人大 BABS 3

中文导读

针对稀疏指数跟踪中LASSO惩罚估计偏差大、非凸惩罚计算成本高的问题,提出多步加权LASSO方法,在保持计算效率的同时降低偏差,实证显示其样本外跟踪误差更小。

Abstract

Both convex and non-convex penalties have been widely proposed to tackle the sparse index tracking problem. Owing to their good property of generating sparse solutions, penalties based on the least absolute shrinkage and selection operator (LASSO) and its variations are often suggested in the stream of convex penalties. However, the LASSO-type penalty is often shown to have poor out-of-sample performance, due to the relatively large biases introduced in the estimates of tracking portfolio weights by shrinking the parameter estimates toward to zero. On the other hand, non-convex penalties could be used to improve the bias issue of LASSO-type penalty. However, the resulting problem is non-convex optimization and thus is computationally intensive, especially in high-dimensional settings. Aimed at ameliorating bias introduced by LASSO-type penalty while preserving computational efficiency, this paper proposes a multi-step convex optimization approach based on the multi-step weighted LASSO (MSW-LASSO) for sparse index tracking. Empirical results show that the proposed method can achieve smaller out-of-sample tracking errors than those based on LASSO-type penalties and have performance competitive to those based on non-convex penalties.

金融工程指数跟踪高维统计凸优化稀疏建模