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Feature learning

Known as: Learning representation, Representation learning, Unsupervised feature learning 
In machine learning, feature learning or representation learning is a set of techniques that learn a feature: a transformation of raw data input to a… 
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Papers overview

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2018
2018
This paper describes the results of NILC team at CWI 2018. We developed solutions following three approaches: (i) a feature… 
2016
2016
The main intrinsic evaluation for vector space representation has been focused on textual similarity, where the task is to… 
Highly Cited
2015
Highly Cited
2015
This paper presents a coupled discriminative feature learning (CDFL) method for heterogeneous face recognition (HFR). Different… 
Highly Cited
2015
Highly Cited
2015
Vector space representation of words has been widely used to capture fine-grained linguistic regularities, and proven to be… 
2014
2014
Recent work on learning multilingual word representations usually relies on the use of word-level alignements (e.g. infered with… 
2013
2013
This article presents a new global approach for detecting vanishing points and groups of mutually orthogonal vanishing directions… 
2010
2010
Most supervised language processing systems show a significant drop-off in performance when they are tested on text that comes… 
Highly Cited
2004
Highly Cited
2004
Highly Cited
1997
Highly Cited
1997
Much of the work on perception and understanding of music by computers has focused on low-level perceptual features such as pitch…