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Neural network techniques for financial performance prediction: integrating fundamental and technical analysis

机译:神经网络技术用于财务绩效预测:整合基础和技术分析

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This research project investigates the ability of neural networks, specifically, the backpropagation algorithm, to integrate fundamental and technical analysis for financial performance prediction. The predictor attributes include 16 financial statement variables and 11 macroeconomic variables. The rate of return on common shareholders' equity is used as the to-be-predicted variable. Financial data of 364 S&P companies are extracted from the CompuStat database, and macroeconomic variables are extracted from the Citibase database for the study period of 1985-1995. Used as predictors in Experiments 1, 2, and 3 are the 1 year's, the 2 years', and the 3 years' financial data, respectively. Experiment 4 has 3 years' financial data and macroeconomic data as predictors. Moreover, in order to compensate for data noise and parameter misspecification as well as to reveal prediction logic and procedure, we apply a rule extraction technique to convert the connection weights from trained neural networks to symbolic classification rules. The performance of neural networks is compared with the average return from the top one-third returns in the market (maximum benchmark) that approximates the return from perfect information as well as with the overall market average return (minimum benchmark) that approximates the return from highly diversified portfolios. Paired tests are carried out to calculate the statistical significance of mean differences. Experimental results indicate that neural networks using 1 year's or multiple years' financial data consistently and significantly outperform the minimum benchmark, but not the maximum benchmark. As for neural networks with both financial and macroeconomic predictors, they do not outperform the minimum or maximum benchmark in this study. The experimental results also show that the average return of 0.25398 from extracted rules is the only compatible result to the maximum benchmark of 0.2786. Consequentially, we demonstrate rule extraction as a postprocessing technique for improving prediction accuracy and for explaining the prediction logic to financial decision makers.
机译:该研究项目研究了神经网络(特别是反向传播算法)整合基础和技术分析以进行财务绩效预测的能力。预测变量属性包括16个财务报表变量和11个宏观经济变量。普通股东权益收益率用作预测变量。从CompuStat数据库中提取了364家标准普尔公司的财务数据,并从Citibase数据库中提取了1985-1995年研究期间的宏观经济变量。在实验1、2和3中用作预测指标的分别是1年,2年和3年的财务数据。实验4以3年的财务数据和宏观经济数据作为预测指标。此外,为了补偿数据噪声和参数错误指定以及揭示预测逻辑和过程,我们应用规则提取技术将连接权重从经过训练的神经网络转换为符号分类规则。将神经网络的性能与市场上最高的三分之一回报的平均回报(最大基准)进行比较,该平均回报近似于完美信息的回报;而总体市场平均回报(最小基准)则与近似的信息回报进行比较。高度多元化的投资组合。进行配对测试以计算平均差异的统计显着性。实验结果表明,使用一年或多年财务数据的神经网络始终且显着优于最小基准,但不超过最大基准。至于同时具有财务和宏观经济预测指标的神经网络,它们的性能并没有超过本研究的最低或最高基准。实验结果还表明,提取规则的平均收益0.25398是与最大基准0.2786兼容的唯一结果。因此,我们演示了规则提取作为一种后处理技术,用于提高预测准确性和向财务决策者解释预测逻辑。

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