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Computing Expectiles Using k-Nearest Neighbours Approach

Farooq, Muhammad (author)
Sarfraz, Sehrish (author)
Chesneau, Christophe (author)
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Ul Hassan, Mahmood (author)
Stockholms universitet,Statistiska institutionen
Raza, Muhammad Ali (author)
Khan Sherwani, Rehan Ahmad (author)
Jamal, Farrukh (author)
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 (creator_code:org_t)
2021-04-11
2021
English.
In: Symmetry. - : MDPI AG. - 2073-8994. ; 13:4
  • Journal article (peer-reviewed)
Abstract Subject headings
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  • Expectiles have gained considerable attention in recent years due to wide applications in many areas. In this study, the k-nearest neighbours approach, together with the asymmetric least squares loss function, called ex-kNN, is proposed for computing expectiles. Firstly, the effect of various distance measures on ex-kNN in terms of test error and computational time is evaluated. It is found that Canberra, Lorentzian, and Soergel distance measures lead to minimum test error, whereas Euclidean, Canberra, and Average of (L1,L∞) lead to a low computational cost. Secondly, the performance of ex-kNN is compared with existing packages er-boost and ex-svm for computing expectiles that are based on nine real life examples. Depending on the nature of data, the ex-kNN showed two to 10 times better performance than er-boost and comparable performance with ex-svm regarding test error. Computationally, the ex-kNN is found two to five times faster than ex-svm and much faster than er-boost, particularly, in the case of high dimensional data. 

Subject headings

NATURVETENSKAP  -- Matematik -- Sannolikhetsteori och statistik (hsv//swe)
NATURAL SCIENCES  -- Mathematics -- Probability Theory and Statistics (hsv//eng)

Keyword

asymmetric least squares loss function
k-nearest neighbours approach
expectiles
machine learning
high dimensional data

Publication and Content Type

ref (subject category)
art (subject category)

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