Dynamic prediction length for time series with sequence to sequence network

Mark Harmon, D. Klabjan
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引用次数: 8

Abstract

Recurrent neural networks and sequence to sequence models require a predetermined length for prediction output length. Our model addresses this by allowing the network to predict a variable length output in inference. A new loss function with a tailored gradient computation is developed that trades off prediction accuracy and output length. The model utilizes a function to determine whether a particular output at a time should be evaluated or not given a predetermined threshold. We evaluate the model on the problem of predicting the prices of securities. We find that the model makes longer predictions for more stable securities and it naturally balances prediction accuracy and length.
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序列到序列网络时间序列的动态预测长度
递归神经网络和序列到序列模型需要一个预定的长度来预测输出长度。我们的模型通过允许网络在推理中预测可变长度的输出来解决这个问题。开发了一种新的损失函数,该函数具有定制的梯度计算,可以权衡预测精度和输出长度。该模型利用一个函数来确定某一时刻的特定输出是否应该评估,或者是否应该给定一个预定的阈值。我们在证券价格预测问题上对模型进行了评价。我们发现该模型对更稳定的证券进行了更长的预测,并且很自然地平衡了预测精度和预测长度。
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