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Affinity Propagation Clustering for Intelligent Portfolio Diversification and Investment Risk Reduction

机译:相似度传播聚类,用于智能投资组合分散和降低投资风险

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In this paper, an intelligent portfolio selection method based on Affinity Propagation clustering algorithm is proposed to solve the stable investment problem. The goal of this work is to minimize the volatility of the selected portfolio from the component stocks of S&P 500 index. Each independent stock can be viewed as a node in graph, and the similarity measurements of stock price variations between companies are calculated as the edge weights. Affinity Propagation clustering algorithm solve the graph theory problem by repeatedly update responsibility and availability message passing matrices. This research tried to find most representative and discriminant features to model the stock similarity. The testing features are divided into two major categories, including time-series covariance, and technical indicators. The historical price and trading volume data is used to simulate the portfolio selection and volatility measurement. After grouping these investment targets into a small set of clusters, the selection process will choose fixed number of stocks from different clusters to form the portfolio. The experimental results show that the proposed system can effectively generate more stable portfolio by Affinity Propagation clustering algorithm with proper similarity features than average cases with similar settings.
机译:为了解决稳定的投资问题,本文提出了一种基于亲和力传播聚类算法的智能投资组合选择方法。这项工作的目的是最大程度地减少标准普尔500指数成分股中所选投资组合的波动性。可以将每个独立的股票视为图中的一个节点,并且将公司之间股票价格变化的相似性度量计算为边权重。相似性传播聚类算法通过重复更新责任和可用性消息传递矩阵来解决图论问题。这项研究试图找到最有代表性和区别性的特征来对股票相似性进行建模。测试功能分为两大类,包括时间序列协方差和技术指标。历史价格和交易量数据用于模拟投资组合选择和波动率测量。将这些投资目标划分为一小组集群之后,选择过程将从不同的集群中选择固定数量的股票以形成投资组合。实验结果表明,与具有相似设置的平均情况相比,该系统能够通过具有相似性特征的相似性传播聚类算法有效地生成更稳定的投资组合。

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