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A Co-training Approach for Time Series Prediction with Missing Data

机译:缺少数据的时间序列预测的协同训练方法

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In this paper we consider the problem of missing data in time series analysis. We propose a semi-supervised co-training method to handle the problem of missing data. We transform the time series data to set of labeled and unlabeled data. Different predictors are used to predict the unlabelled data and the most confident labeled patterns are used to retrain the predictors further to and enhance the overall prediction accuracy. By labeling the unknown patterns the missing data is compensated for. Experiments were conducted on different time series data and with varying percentage of missing data using a uniform distribution. We used KNN base predictors and Fuzzy Inductive Reasoning (FIR) base predictors and compared their performance using different confidence measures. Results reveal the effectiveness of the co-training method to compensate for the missing values and to improve prediction. The FIR model together with the "similarity" confidence measures obtained in most cases the best results in our study.
机译:在本文中,我们考虑了时间序列分析中数据丢失的问题。我们提出了一种半监督的协同训练方法来解决数据丢失的问题。我们将时间序列数据转换为标记和未标记数据集。使用不同的预测变量来预测未标记的数据,使用最可信的标记模式来进一步训练预测变量,以提高整体预测的准确性。通过标记未知模式,可以补偿丢失的数据。使用均匀分布,对不同的时间序列数据以及丢失数据的百分比变化进行了实验。我们使用了KNN基本预测变量和模糊归纳推理(FIR)基本预测变量,并使用不同的置信度度量比较了它们的性能。结果表明,协同训练方法可有效补偿缺失值并改善预测。在大多数情况下,FIR模型与“相似性”置信度一起获得了我们研究中的最佳结果。

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