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Query-sensitive distance measure selection for time series nearest neighbor classification

机译:时间序列最近邻分类的查询敏感距离度量选择

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摘要

Many distance or similarity measures have been proposed for time series similarity search. However, none of these measures is guaranteed to be optimal when used for 1-Nearest Neighbor (NN) classification. In this paper we study the problem of selecting the most appropriate distance measure, given a pool of time series distance measures and a query, so as to perform NN classification of the query. We propose a framework for solving this problem, by identifying, given the query, the distance measure most likely to produce the correct classification result for that query. From this proposed framework, we derive three specific methods, that differ from each other in the way they estimate the probability that a distance measure correctly classifies a query object. In our experiments, our pool of measures consists of Dynamic TimeWarping (DTW), Move-Split-Merge (MSM), and Edit distance with Real Penalty (ERP). Based on experimental evaluation with 45 datasets, the best-performing of the three proposed methods provides the best results in terms of classification error rate, compared to the competitors, which include using the Cross Validation method for selecting the distance measure in each dataset, as well as using a single specific distance measure (DTW, MSM, or ERP) across all datasets.
机译:对于时间序列相似性搜索,已经提出了许多距离或相似性度量。但是,当用于1-Nearest Neighbor(NN)分类时,这些措施都不保证是最佳的。在本文中,我们研究了在给定时间序列距离量度和查询的情况下选择最合适的距离量度的问题,以便对查询进行NN分类。通过为给定查询确定最可能为该查询产生正确分类结果的距离度量,我们提出了一个解决此问题的框架。从这个提出的框架中,我们得出了三种特定的方法,它们在估计距离度量正确分类查询对象的可能性方面彼此不同。在我们的实验中,我们的量度池包括动态时间规整(DTW),移动拆分合并(MSM)和使用实罚编辑距离(ERP)。根据对45个数据集的实验评估,与竞争对手相比,这三种方法的最佳表现在分类错误率方面提供了最佳结果,其中包括使用交叉验证方法在每个数据集中选择距离度量,以及在所有数据集中使用单个特定距离度量(DTW,MSM或ERP)。

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