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Improving prediction of neural networks: a study of tow financial prediction tasks

机译:改进神经网络的预测:两个财务预测任务的研究

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Neural networks are excellent mapping tools for complex financial data. Their mapping capabilities however do not always result in good generalizability for financial prediction models. Increasing the number of nodes and hidden layers in a neural network model produces better mapping of the data since the number of parameters available to the model increases. This is determinal to generalizabilitiy of the model since the model memorizes idiosyncratic patterns in the data. A neural network model can be expected to be more generalizable if the model architecture is made less complex by using fewer input nodes. In this study we simplify the neural network by eliminating input nodes that have the least contribution to the prediction of a desired outcome. We also provide a theoretical relationship of the sensitivity of output variables to the input variables under certain conditions. This research initiates an effort in identifying methods that would improve the generalizability of neural networks in financial prediction tasks by using mergers and bankruptcy models. The result indicates that incorporating more variables that appear relevant in a model does not necessarily improve prediction performance.
机译:神经网络是用于复杂财务数据的出色映射工具。但是,它们的映射功能并不总是能为财务预测模型带来良好的通用性。由于可用于模型的参数数量增加,因此神经网络模型中节点和隐藏层数量的增加会产生更好的数据映射。由于模型会记住数据中的特有模式,因此这不利于模型的通用性。如果通过使用较少的输入节点使模型体系结构不那么复杂,则可以期望神经网络模型具有更高的通用性。在这项研究中,我们通过消除对预期结果的预测贡献最小的输入节点来简化神经网络。我们还提供了在某些条件下输出变量对输入变量的敏感性的理论关系。这项研究致力于通过合并和破产模型来确定可改善神经网络在财务预测任务中的通用性的方法。结果表明,合并更多在模型中显得相关的变量并不一定会改善预测性能。

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