دانلود Asynchronism-based principal component analysis for time series data mining

ترجمه فارسیAsynchronism-based principal component analysis for time series data mining
قیمت : 985,000 ریال
شناسه محصول : 2008082
نویسنده/ناشر/نام مجله : Expert systems with applications
سال انتشار: 2014
تعداد صفحات انگليسي : 9
نوع فایل های ضمیمه : pdf+word
حجم فایل : 883 Kb
کلمه عبور همه فایلها : www.daneshgahi.com
عنوان انگليسي : Asynchronism-based principal component analysis for time series data mining

چکیده

Abstract

Principal component analysis (PCA) is often applied to dimensionality reduction for time series data mining. However, the principle of PCA is based on the synchronous covariance, which is not very effective in some cases. In this paper, an asynchronism-based principal component analysis (APCA) is proposed to reduce the dimensionality of univariate time series. In the process of APCA, an asynchronous method based on dynamic time warping (DTW) is developed to obtain the interpolated time series which derive from the original ones. The correlation coefficient or covariance between the interpolated time series rep-resents the correlation between the original ones. In this way, a novel and valid principal component analysis based on the asynchronous covariance is achieved to reduce the dimensionality. The results of several experiments demonstrate that the proposed approach APCA outperforms PCA for dimensionality reduction in the field of time series data mining.

Keywords: Asynchronous correlation Covariance matrix Principal component analysis

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