Being able to capture the characteristics of a time series with a feature vector is a very important task with a multitude of applications, such as classification, clustering or forecasting. Usually, the features are obtained from linear and nonlinear time series measures, that may present several data related drawbacks. In this work we introduce NetF as an alternative set of features, incorporating several representative topological measures of different complex networks mappings of the time series. Our approach does not require data preprocessing and is applicable regardless of any data characteristics. Exploring our novel feature vector, we are able to connect mapped network features to properties inherent in diversified time series models, showing that NetF can be useful to characterize time data. Furthermore, we also demonstrate the applicability of our methodology in clustering synthetic and benchmark time series sets, comparing its performance with more conventional features, showcasing how NetF can achieve high-accuracy clusters. Our results are very promising, with network features from different mapping methods capturing different properties of the time series, adding a different and rich feature set to the literature.
翻译:能够捕捉具有特性矢量的时间序列特性是一项非常重要的任务,具有多种应用,例如分类、集群或预报等。通常,这些特征是从线性和非线性时间序列测量中获取的,这些测量结果可能产生若干与数据有关的缺陷。在这项工作中,我们引入了NetF作为一套备选特征,将不同复杂网络对时间序列的映射的若干具有代表性的地形测量结果纳入其中。我们的方法不需要数据预处理,而且不论任何数据特性,都适用。探索我们的新特征矢量,我们可以将所绘制的网络特征与多样化时间序列模型所固有的属性连接起来,显示NetF对时间数据特征有用。此外,我们还展示了我们将合成和基准时间序列组合起来的方法的实用性,将其与较传统的特征进行比较,展示NetF如何实现高精确性群集。我们的结果非常有希望,不同绘图方法的网络特征捕捉了时间序列的不同特性,为文献添加了不同和丰富的特征集。