ملخص
Standard Principal-Component Analysis (PCA) is known to be sensitive to outliers among the processed data. On the other hand, L1-norm-based PCA (L1-PCA) exhibits sturdy resistance against outliers, while it performs similar to standard PCA when applied to nominal or smoothly corrupted data [1]. Exact calculation of the K L1-norm Principal Components (L1-PCs) of a rank-r data matrix mathbf X in mathbb {R}-{D times N} costs mathcal {O}(N-{(r -1)K + 1}) [1], [2]. In this work, we present reduced-rank L1-PCA (RR L1-PCA): a hybrid approach that approximates the K L1-PCs of mathbf X by the L1-PCs of its L2-norm-based rank-d approximation (d leq r), calculable exactly with reduced complexity mathcal {O}(N-{(d -1)K + 1}). The proposed method combines the denoising capabilities and low computation cost of standard PCA with the outlier-resistance of L1-PCA. RR L1-PCA is accompanied by formal performance guarantees as well as thorough numerical studies that corroborate its computational and corruption resistance merits.
| اللغة الأصلية | الإنجليزيّة |
|---|---|
| رقم المقال | 9266768 |
| الصفحات (من إلى) | 240-255 |
| عدد الصفحات | 16 |
| دورية | IEEE Transactions on Signal Processing |
| مستوى الصوت | 69 |
| المعرِّفات الرقمية للأشياء | |
| حالة النشر | نُشِر - 2021 |
| منشور خارجيًا | نعم |
ملاحظة ببليوغرافية
Publisher Copyright:© 1991-2012 IEEE.
بصمة
أدرس بدقة موضوعات البحث “Reduced-Rank L1-Norm Principal-Component Analysis with Performance Guarantees'. فهما يشكلان معًا بصمة فريدة.قم بذكر هذا
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