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Feature learning
Known as:
Learning representation
, Representation learning
, Unsupervised feature learning
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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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Related topics
Related topics
33 relations
Artificial neural network
Autoencoder
Basis function
Boltzmann machine
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Broader (1)
Machine learning
Papers overview
Semantic Scholar uses AI to extract papers important to this topic.
2018
2018
NILC at CWI 2018: Exploring Feature Engineering and Feature Learning
N. Hartmann
,
L. B. D. Santos
BEA@NAACL-HLT
2018
Corpus ID: 46940692
This paper describes the results of NILC team at CWI 2018. We developed solutions following three approaches: (i) a feature…
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2017
2017
Learning emotion-discriminative and domain-invariant features for domain adaptation in speech emotion recognition
Qi-rong Mao
,
Guopeng Xu
,
W. Xue
,
Jianping Gou
,
Yongzhao Zhan
Speech Communication
2017
Corpus ID: 7042849
2016
2016
Story Cloze Evaluator: Vector Space Representation Evaluation by Predicting What Happens Next
N. Mostafazadeh
,
Lucy Vanderwende
,
Wen-tau Yih
,
Pushmeet Kohli
,
James F. Allen
RepEval@ACL
2016
Corpus ID: 15886159
The main intrinsic evaluation for vector space representation has been focused on textual similarity, where the task is to…
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Highly Cited
2015
Highly Cited
2015
Coupled Discriminative Feature Learning for Heterogeneous Face Recognition
Yi Jin
,
Jiwen Lu
,
Q. Ruan
IEEE Transactions on Information Forensics and…
2015
Corpus ID: 15886095
This paper presents a coupled discriminative feature learning (CDFL) method for heterogeneous face recognition (HFR). Different…
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Highly Cited
2015
Highly Cited
2015
Learning Word Representations by Jointly Modeling Syntagmatic and Paradigmatic Relations
Fei Sun
,
J. Guo
,
Yanyan Lan
,
Jun Xu
,
Xueqi Cheng
Annual Meeting of the Association for…
2015
Corpus ID: 2570211
Vector space representation of words has been widely used to capture fine-grained linguistic regularities, and proven to be…
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2014
2014
Learning Multilingual Word Representations using a Bag-of-Words Autoencoder
Stanislas Lauly
,
A. Boulanger
,
H. Larochelle
arXiv.org
2014
Corpus ID: 13599696
Recent work on learning multilingual word representations usually relies on the use of word-level alignements (e.g. infered with…
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2013
2013
A Global Approach for the Detection of Vanishing Points and Mutually Orthogonal Vanishing Directions
M. Antunes
,
J. Barreto
IEEE Conference on Computer Vision and Pattern…
2013
Corpus ID: 7419369
This article presents a new global approach for detecting vanishing points and groups of mutually orthogonal vanishing directions…
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2010
2010
Exploring Representation-Learning Approaches to Domain Adaptation
Fei Huang
,
A. Yates
2010
Corpus ID: 9841638
Most supervised language processing systems show a significant drop-off in performance when they are tested on text that comes…
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Highly Cited
2004
Highly Cited
2004
Real-time object tracking for soccer-robots without color information
André Treptow
,
A. Zell
Robotics Auton. Syst.
2004
Corpus ID: 7721530
Highly Cited
1997
Highly Cited
1997
A Machine Learning Approach to Musical Style Recognition
R. Dannenberg
,
B. Thom
,
David S. Watson
International Conference on Mathematics and…
1997
Corpus ID: 9144006
Much of the work on perception and understanding of music by computers has focused on low-level perceptual features such as pitch…
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