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Word embedding
Known as:
Word vector space
, Thought vectors
, Word vectors
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Word embedding is the collective name for a set of language modeling and feature learning techniques in natural language processing (NLP) where words…
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Related topics
Related topics
18 relations
Bioinformatics
Brown clustering
Co-occurrence matrix
Deep learning
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Papers overview
Semantic Scholar uses AI to extract papers important to this topic.
2018
2018
GBD-NER at PARSEME Shared Task 2018: Multi-Word Expression Detection Using Bidirectional Long-Short-Term Memory Networks and Graph-Based Decoding
Tiberiu Boros
,
Ruxandra Burtica
LAW-MWE-CxG@COLING
2018
Corpus ID: 52121142
This paper addresses the issue of multi-word expression (MWE) detection by employing a new decoding strategy inspired after graph…
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2017
2017
The implementation of a Deep Recurrent Neural Network Language Model on a Xilinx FPGA
Yufeng Hao
,
S. Quigley
arXiv.org
2017
Corpus ID: 26120461
Recently, FPGA has been increasingly applied to problems such as speech recognition, machine learning, and cloud computation such…
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2016
2016
Enhancing the LexVec Distributed Word Representation Model Using Positional Contexts and External Memory
Alexandre Salle
,
M. Idiart
,
Aline Villavicencio
arXiv.org
2016
Corpus ID: 2333787
In this paper we take a state-of-the-art model for distributed word representation that explicitly factorizes the positive…
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Highly Cited
2015
Highly Cited
2015
Character-based Neural Machine Translation
Wang Ling
,
I. Trancoso
,
Chris Dyer
,
A. Black
arXiv.org
2015
Corpus ID: 5799549
We introduce a neural machine translation model that views the input and output sentences as sequences of characters rather than…
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2015
2015
The IBM Systems for Trilingual Entity Discovery and Linking at TAC 2015
Avirup Sil
,
Georgiana Dinu
,
Radu Florian
Text Analysis Conference
2015
Corpus ID: 35311824
This paper describes the IBM systems for the Trilingual Entity Discovery and Linking (EDL) for the TAC 2016 Knowledge-Base…
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2014
2014
Text Classification with Document Embeddings
Chao-Shainn Huang
,
Xipeng Qiu
,
Xuanjing Huang
China National Conference on Chinese…
2014
Corpus ID: 2496856
Distributed representations have gained a lot of interests in natural language processing community. In this paper, we propose a…
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2010
2010
Feature selection using bag-of-visual-words representation
A. Faheema
,
S. Rakshit
IEEE International Advance Computing Conference
2010
Corpus ID: 15009029
In this paper, we introduce an efficient method to substantially increase the recognition performance of object recognition by…
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2009
2009
Spatial Weighting for Bag-of-Visual-Words and Its Application in Content-Based Image Retrieval
Xin Chen
,
Xiaohua Hu
,
Xiajiong Shen
Pacific-Asia Conference on Knowledge Discovery…
2009
Corpus ID: 12107967
It is a challenging and important task to retrieve images from a large and highly varied image data set based on their visual…
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2006
2006
A retrieval method of similar question articles from web bulletin board
Y. Sakurai
,
Soichiro Miyazaki
,
M. Akiyoshi
International Conference on Software and Data…
2006
Corpus ID: 4887188
This paper proposes a method for retrieving similar question articles from Web bulletin boards, which basically use the cosine…
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2002
2002
Measuring the Similarity between Compound Nouns in Different Languages Using Non-Parallel Corpora
Takaaki Tanaka
International Conference on Computational…
2002
Corpus ID: 9996822
This paper presents a method that measures the similarity between compound nouns in different languages to locate translation…
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