Skip to search formSkip to main contentSkip to account menu

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… 
Wikipedia (opens in a new tab)

Papers overview

Semantic Scholar uses AI to extract papers important to this topic.
2017
2017
We explore context representation learning methods in neural-based models for dialog act classification. We propose and compare… 
2016
2016
Human pose estimation is a well-known computer vision problem that receives intensive research interest. The reason for such… 
2015
2015
In this paper we propose a method for estimating depth from a single image using a coarse to fine approach. We argue that… 
2014
2014
The mathematical representation of semantics is a key issue for Natural Language Processing (NLP). A lot of research has been… 
2014
2014
Recent work on learning multilingual word representations usually relies on the use of word-level alignements (e.g. infered with… 
2012
2012
Monitoring trail (m-trail) has been proposed as an effective approach for link failure localization in all-optical wavelength… 
2011
2011
Achieving fast and precise failure localization has long been a highly desired feature in all-optical mesh networks. Monitoring… 
2005
2005
This paper confirms that numerical aperture (NA) is a key factor in mode coupling [the energy transfer among propagating modes in… 
2005
2005
We investigated the way to reduce the mode coupling (the energy transfer among the propagating modes) in a multimode fiber. It… 
Highly Cited
1989
Highly Cited
1989
A central problem in connectionist modelling is the control of network and architectural resources during learning. In the…