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Mutual Fund Performance Evaluation System Using Fast Adaptive Neural Network Classifier

机译:快速自适应神经网络分类器的共同基金绩效评估系统

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Application of financial information systems requires instant and fast response for continually changing market conditions. The purpose of this paper is to construct a mutual fund performance evaluation model utilizing the fast adaptive neural network classifier (FANNC), and to compare our results with those from a backpropagation neural networks (BPN) model. In our experiment, the FANNC approach requires much less time than the BPN approach to evaluate mutual fund performance. RMS is also superior for FANNC. These results hold for both classification problems and for prediction problems, making FANNC ideal for financial applications which require massive volumes of data and routine updates.
机译:金融信息系统的应用需要即时和快速响应不断变化的市场条件。本文的目的是利用快速自适应神经网络分类器(Fannc)来构建一个共同基金绩效评估模型,并将我们的结果与来自反向分布神经网络(BPN)模型的结果进行比较。在我们的实验中,Fannc方法需要比BPN方法更少的时间来评估共同基金表现。 RMS也是Fannc的优越。这些结果对分类问题和预测问题持有,使Fannc非常适合需要大量数据和常规更新的财务应用。

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