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http://hdl.handle.net/11718/24271
Title: | Data-driven dimension reduction in functional principal component analysis identifying the change-point in functional data |
Authors: | Banerjee, Buddhananda Laha, Arnab K. Lakra, Arjun |
Keywords: | Statistical Analysis;Data Mining;Functional principal component analysis (FPCA) |
Issue Date: | 6-Jul-2020 |
Publisher: | Statistical Analysis and Data Mining |
Citation: | Banerjee, B., Laha, A. K., & Lakra, A. (2020). Data‐driven dimension reduction in functional principal component analysis identifying the change‐point in functional data. Statistical Analysis and Data Mining: The ASA Data Science Journal, 13(6), 529-536. |
Abstract: | Functional principal component analysis (FPCA) is the most commonly used technique to analyze infinite-dimensional functional data in finite lower-dimensional space for the ease of computational intensity. However, the power of a test detecting the existence of a change-point falls with the inclusion of more principal dimensions explaining a larger proportion of variability. We propose a new methodology for dynamically selecting the dimensions in FPCA that are used further for the testing of the existence of any change-point in the given data. This data-driven and efficient approach leads to a more powerful test than those available in the literature. We illustrate this method on the monthly global average anomaly of temperatures. |
URI: | http://hdl.handle.net/11718/24271 |
Appears in Collections: | Journal Articles |
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Data-driven dimension.pdf Restricted Access | Data‐driven dimension reduction in functional principal component analysis identifying the change‐point in functional data | 670.8 kB | Adobe PDF | View/Open Request a copy |
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