Clustering-based value investing strategy in the Helsinki Stock Exchange: k-means algorithm

Topi Issakainen
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Abstract

The purpose of this research is to study the possibility of combining quantitative clustering of stocks and value investing. The feasibility of this approach is tested using Finnish market data from the period 2005 to 2021. The benchmark index used in this research is the OMX Helsinki Growth Index. The strategy is based on the combination of P/E, P/CF, and P/B ratios, which serve as the basis for the k-means algorithm. The data is pre-processed by removing stocks that have not generated positive earnings and cash flow during the previous 12 months. The k-means algorithm assigns stocks to clusters, and the cluster with the lowest financial ratios is chosen as the value portfolio. The research also includes a sensitivity analysis of value portfolios, where the initial number of clusters in the clustering phase ranges from three to ten. Returns of different value portfolios are compared to each other and the benchmark index. The quality of results is evaluated using the Sharpe ratio and Jensen's alpha. According to the findings, the value portfolio constructed using nine clusters generated the highest risk-adjusted return, with an annual return of 30.27% over the 2005 to 2021 period. Furthermore, the best-performing value portfolio from 2005 to 2017 was compared to the benchmark index from 2018 to 2021. The value portfolio achieved an annual return of 26.05% during the 2018-2021 period, while the corresponding return of the benchmark index was 11.74%.
赫尔辛基证券交易所基于聚类的价值投资策略:K-均值算法
本研究的目的是研究将股票定量聚类与价值投资相结合的可能性。我们使用 2005 年至 2021 年期间的芬兰市场数据来检验这种方法的可行性。本研究使用的基准指数是 OMX 赫尔辛基增长指数(OMX Helsinki Growth Index)。该策略基于市盈率、市净率和市净率的组合,这也是 k-means 算法的基础。数据经过预处理,剔除了在过去 12 个月中未产生正收益和现金流的股票。k-means 算法将股票分配到群组中,并选择财务比率最低的群组作为价值投资组合。研究还包括价值投资组合的敏感性分析,聚类阶段的初始聚类数量从 3 个到 10 个不等。将不同价值投资组合的收益率与基准指数进行比较。使用夏普比率和詹森阿尔法评估结果的质量。研究结果显示,使用九个群组构建的价值投资组合产生了最高的风险调整回报率,在 2005 年至 2021 年期间的年回报率为 30.27%。此外,将 2005 年至 2017 年表现最佳的价值投资组合与 2018 年至 2021 年的基准指数进行了比较。在 2018-2021 年期间,价值投资组合取得了 26.05% 的年回报率,而基准指数的相应回报率为 11.74%。
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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