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Research on Data Mining and Investment Recommendation of Individual Users Based on Financial Time Series Analysis

机译:基于财务时间序列分析的个人用户数据挖掘和投资推荐研究

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摘要

With the continuous development of financial information technology, traditional data mining technology cannot effectively deal with large-scale user data sets, nor is it suitable to actively discover various potential rules from a large number of data and predict future trends. Time series are the specific values of statistical indicators on different time scales. Data sequences arranged in chronological order exist in our lives and scientific research. Financial time series is a special kind of time series, which has the commonness of time series, chaos, non-stationary and non-linear characteristics. Financial time series analysis judges the future trend of change through the analysis of historical time series. Through in-depth analysis of massive financial data, mining its potential valuable information, it can be used for individual or financial institutions in various financial activities, such as investment decision-making, market forecasting, risk management, customer requirement analysis provides scientific evidence.
机译:随着财务信息技术的不断发展,传统的数据挖掘技术无法有效地处理大规模的用户数据集,也不适合积极地从大量数据中发现各种潜在规则并预测未来的趋势。时间序列是不同时间尺度上的统计指标的特定值。在我们的生命和科学研究中,按时间顺序排列的数据序列存在。金融时间序列是一种特殊的时间序列,具有时间序列,混沌,非静止和非线性特性的共同点。财务时间序列分析通过分析历史时序序列来判断未来的变革趋势。通过深入分析大规模财务数据,挖掘其潜在有价值的信息,可用于各种金融活动中的个人或金融机构,如投资决策,市场预测,风险管理,客户需求分析提供科学证据。

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