基于加权特征的时间序列数据分类

Penugonda Ravikumar, V. Devi
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引用次数: 6

摘要

分类是数据挖掘领域中最流行的技术之一。在监督学习中,根据已知的训练集为新模式分配一个类标签。提出了一种新的时间序列数据分类算法。在我们的算法中,我们使用了四个参数,并基于它们在不同基准数据集上的显著性,我们使用模拟退火过程分配了权重。我们将这些参数的组合作为性能指标来寻找精度和时间复杂度。我们在6个基准数据集上进行了实验,结果表明,与1NN分类器相比,我们的算法在一些情况下计算速度快,精度高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Weighted feature-based classification of time series data
Classification is one of the most popular techniques in the data mining area. In supervised learning, a new pattern is assigned a class label based on a training set whose class labels are already known. This paper proposes a novel classification algorithm for time series data. In our algorithm, we use four parameters and based on their significance on different benchmark datasets, we have assigned the weights using simulated annealing process. We have taken the combination of these parameters as a performance metric to find the accuracy and time complexity. We have experimented with 6 benchmark datasets and results shows that our novel algorithm is computationally fast and accurate in several cases when compared with 1NN classifier.
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