论文标题
确定标准普尔500标准普尔500财务数据市场状态中的主要工业领域
Identifying Dominant Industrial Sectors in Market States of the S&P 500 Financial Data
论文作者
论文摘要
在金融市场等复杂的经济体系中,了解和预测不断变化的市场状况对金融机构和监管机构等各种利益相关者至关重要。基于以下发现:标准普尔500股市的部门相关矩阵的动态可以通过聚类算法来描述一系列不同状态,我们试图确定在每个州的相关结构中占主导地位的工业领域。为此,我们使用一种从1992年至2012年的每日标准普尔500标准普尔500股市数据中的可解释人工智能(XAI)的方法,以将相关得分分配给每个数据点的每个功能。为了比较特征对于整个数据集的重要性,我们开发了一个聚合过程,并应用贝叶斯变更点分析以确定最重要的扇区相关性。我们表明,每个状态的相关矩阵仅由少数部门相关性主导。特别是能源和IT部门被确定为确定经济状况的关键因素。此外,我们表明,仅使用具有最高XAI-相关的八个扇区相关性的替代模型可以复制90%的群集分配。总的来说,我们的发现意味着金融市场动态的额外尺寸降低。
Understanding and forecasting changing market conditions in complex economic systems like the financial market is of great importance to various stakeholders such as financial institutions and regulatory agencies. Based on the finding that the dynamics of sector correlation matrices of the S&P 500 stock market can be described by a sequence of distinct states via a clustering algorithm, we try to identify the industrial sectors dominating the correlation structure of each state. For this purpose, we use a method from Explainable Artificial Intelligence (XAI) on daily S&P 500 stock market data from 1992 to 2012 to assign relevance scores to every feature of each data point. To compare the significance of the features for the entire data set we develop an aggregation procedure and apply a Bayesian change point analysis to identify the most significant sector correlations. We show that the correlation matrix of each state is dominated only by a few sector correlations. Especially the energy and IT sector are identified as key factors in determining the state of the economy. Additionally we show that a reduced surrogate model, using only the eight sector correlations with the highest XAI-relevance, can replicate 90% of the cluster assignments. In general our findings imply an additional dimension reduction of the dynamics of the financial market.