Index funds are substantially preferred by investors nowadays, and market sensitivities are instrumental in managing index funds. An index fund is a mutual fund aiming to track the returns of a predefined market index (e.g., the S&P 500). A basic strategy to manage an index fund is replicating the index's constituents and weights identically, which is, however, cost-ineffective and impractical. To address this issue, it is required to replicate the index partially with accurately predicted market sensitivities. Accordingly, we propose a novel partial-replication method via learning to predict market sensitivities. We first examine deep-learning models to predict market sensitivities in a supervised manner with our data-processing methods. Then, we propose a partial-index-tracking optimization model controlling the net predicted market sensitivities of the portfolios and index to be the same. These processes' efficacy is corroborated by our experiments on the Korea Stock Price Index 200. Our experiments show a significant reduction of the prediction errors compared with historical estimations and competitive tracking errors of replicating the index utilizing fewer than half of the entire constituents. Therefore, we show that applying deep learning to predict market sensitivities is promising and that our portfolio construction methods are practically effective. Additionally, to our knowledge, this is the first study addressing market sensitivities focused on deep learning.
翻译:当今投资者非常喜欢指数基金,市场敏感性有助于管理指数基金。一个指数基金是一个共同基金,旨在跟踪预先确定的市场指数(例如S & P 500)的回报率。一个管理指数基金的基本战略是仿照指数的成分和重量,但两者相同,但成本效益低,不切实际。为了解决这一问题,必须部分复制指数,准确预测市场敏感性。因此,我们建议通过学习来预测市场敏感性,采取新的部分复制方法。我们首先研究深层次学习模型,以监督的方式预测市场敏感度。然后,我们提出一个部分跟踪指数优化模型,控制投资组合和指数预测的净市场敏感度。这些过程的效力得到我们对韩国股票价格指数200的实验的证实。我们的实验显示,与历史估计和竞争性追踪错误相比,预测错误显著减少,而利用不到一半的选民来复制指数。因此,我们首先研究如何深入地预测市场敏感度,我们的投资组合建设方法实际上是有效的。