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Local Dimensionality Reduction for Non-Parametric Regression

หน่วยงาน Edinburgh Research Archive, United Kingdom

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ชื่อเรื่อง : Local Dimensionality Reduction for Non-Parametric Regression
นักวิจัย : Hoffmann, Heiko , Schaal, Stefan , Vijayakumar, Sethu
คำค้น : Informatics , Computer Science
หน่วยงาน : Edinburgh Research Archive, United Kingdom
ผู้ร่วมงาน : -
ปีพิมพ์ : 2552
อ้างอิง : http://www.springerlink.com/content/lp158m5149m38460/ , http://hdl.handle.net/1842/3704 , 10.1007/s11063-009-9098-0 , 13704621
ที่มา : -
ความเชี่ยวชาญ : -
ความสัมพันธ์ : -
ขอบเขตของเนื้อหา : -
บทคัดย่อ/คำอธิบาย :

Locally-weighted regression is a computationally-efficient technique for non-linear regression. However, for high-dimensional data, this technique becomes numerically brittle and computationally too expensive if many local models need to be maintained simultaneously. Thus, local linear dimensionality reduction combined with locally-weighted regression seems to be a promising solution. In this context, we review linear dimensionalityreduction methods, compare their performance on non-parametric locally-linear regression, and discuss their ability to extend to incremental learning. The considered methods belong to the following three groups: (1) reducing dimensionality only on the input data, (2) modeling the joint input-output data distribution, and (3) optimizing the correlation between projection directions and output data. Group 1 contains principal component regression (PCR); group 2 contains principal component analysis (PCA) in joint input and output space, factor analysis, and probabilistic PCA; and group 3 contains reduced rank regression (RRR) and partial least squares (PLS) regression. Among the tested methods, only group 3 managed to achieve robust performance even for a non-optimal number of components (factors or projection directions). In contrast, group 1 and 2 failed for fewer components since these methods rely on the correct estimate of the true intrinsic dimensionality. In group 3, PLS is the only method for which a computationally-efficient incremental implementation exists.

บรรณานุกรม :
Hoffmann, Heiko , Schaal, Stefan , Vijayakumar, Sethu . (2552). Local Dimensionality Reduction for Non-Parametric Regression.
    กรุงเทพมหานคร : Edinburgh Research Archive, United Kingdom .
Hoffmann, Heiko , Schaal, Stefan , Vijayakumar, Sethu . 2552. "Local Dimensionality Reduction for Non-Parametric Regression".
    กรุงเทพมหานคร : Edinburgh Research Archive, United Kingdom .
Hoffmann, Heiko , Schaal, Stefan , Vijayakumar, Sethu . "Local Dimensionality Reduction for Non-Parametric Regression."
    กรุงเทพมหานคร : Edinburgh Research Archive, United Kingdom , 2552. Print.
Hoffmann, Heiko , Schaal, Stefan , Vijayakumar, Sethu . Local Dimensionality Reduction for Non-Parametric Regression. กรุงเทพมหานคร : Edinburgh Research Archive, United Kingdom ; 2552.