Title of article
Scale and Translation Invariant Collaborative Filtering Systems
Author/Authors
Lemire، Daniel نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2005
Pages
-128
From page
129
To page
0
Abstract
Collaborative filtering systems are prediction algorithms over sparse data sets of user preferences. We modify a wide range of state-of-the-art collaborative filtering systems to make them scale and translation invariant and generally improve their accuracy without increasing their computational cost. Using the EachMovie and the Jester data sets, we show that learning-free constant time scale and translation invariant schemes outperforms other learning-free constant time schemes by at least 3% and perform as well as expensive memory-based schemes (within 4%). Over the Jester data set, we show that a scale and translation invariant Eigentaste algorithm outperforms Eigentaste 2.0 by 20%. These results suggest that scale and translation invariance is a desirable property.
Keywords
reprodutive biology , xishuangbanna , buzz pollination , mirror image flowers , enantiostyly , Gesneriaceae , paraboea rufescens
Journal title
INFORMATION RETRIEVAL
Serial Year
2005
Journal title
INFORMATION RETRIEVAL
Record number
89779
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