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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
Exploiting Structured News Information to Improve Event Detection via Dual-Level Clustering
Shuqi Yu
,
Bin Wu
International Conference on Data Science in…
2018
Corpus ID: 49890922
With massive amount of news articles come to fore every seconds, helping people navigate through correlated news on a given topic…
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2018
2018
Joint Representation Learning for Location-Based Social Networks with Multi-Grained Sequential Contexts
Wayne Xin Zhao
,
Feifan Fan
,
Ji-Rong Wen
,
Edward Y. Chang
ACM Transactions on Knowledge Discovery from Data
2018
Corpus ID: 3403360
This article studies the problem of learning effective representations for Location-Based Social Networks (LBSN), which is useful…
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2018
2018
Face Alignment across Large Pose via MT-CNN Based 3D Shape Reconstruction
Gang Zhang
,
Hu Han
,
S. Shan
,
Xingguang Song
,
Xilin Chen
IEEE International Conference on Automatic Face…
2018
Corpus ID: 46950718
Face alignment plays an important role for robust face recognition and analysis applications in the wild. While a number of face…
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2018
2018
Node Representation Learning for Multiple Networks: The Case of Graph Alignment
Mark Heimann
,
Haomin Shen
,
Danai Koutra
arXiv.org
2018
Corpus ID: 125910011
Recent advances in representation learning produce node embeddings that may be used successfully in many downstream tasks (e.g…
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2017
2017
Information Dropout: learning optimal representations through noise
A. Achille
,
Stefano Soatto
arXiv.org
2017
Corpus ID: 1777221
We introduce Information Dropout, a generalization of dropout that is motivated by the Information Bottleneck principle and…
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2016
2016
Visual Aesthetic Quality Assessment with Multi-task Deep Learning
Yueying Kao
,
R. He
,
Kaiqi Huang
arXiv.org
2016
Corpus ID: 13989811
This paper considers the problem of assessing visual aesthetic quality with semantic information. We cast the assessment problem…
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2016
2016
Inside Out: Two Jointly Predictive Models for Word Representations and Phrase Representations
Fei Sun
,
J. Guo
,
Yanyan Lan
,
Jun Xu
,
Xueqi Cheng
AAAI Conference on Artificial Intelligence
2016
Corpus ID: 4024375
Distributional hypothesis lies in the root of most existing word representation models by inferring word meaning from its…
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2016
2016
Simultaneous Learning of Trees and Representations for Extreme Classification, with Application to Language Modeling
Yacine Jernite
,
A. Choromańska
,
D. Sontag
,
Yann LeCun
arXiv.org
2016
Corpus ID: 12578808
This paper addresses the problem of multi-class classification with an extremely large number of classes, where the class predic…
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2015
2015
Using representation learning and out-of-domain data for a paralinguistic speech task
Benjamin Milde
,
Chris Biemann
Interspeech
2015
Corpus ID: 26730529
In this work, we study the paralinguistic speech task of eating condition classification and present our submitted clas-sification…
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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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