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The Role of Context Types and Dimensionality in Learning Word Embeddings
Oren Melamud
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David McClosky
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Siddharth Patwardhan
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Mohit Bansal
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Paper Details:
Month: June
Year: 2016
Location: San Diego, California
Venue:
NAACL |
Citations
URL
Word-Context Character Embeddings for Chinese Word Segmentation
Hao Zhou
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Zhenting Yu
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Yue Zhang
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Shujian Huang
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Xinyu Dai
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Jiajun Chen
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Adversarial Propagation and Zero-Shot Cross-Lingual Transfer of Word Vector Specialization
Edoardo Maria Ponti
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Ivan Vulić
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Goran Glavaš
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Nikola Mrkšić
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Anna Korhonen
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Evaluation by Association: A Systematic Study of Quantitative Word Association Evaluation
Ivan Vulić
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Douwe Kiela
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Anna Korhonen
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Cross-Lingual Syntactically Informed Distributed Word Representations
Ivan Vulić
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Towards Lower Bounds on Number of Dimensions for Word Embeddings
Kevin Patel
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Pushpak Bhattacharyya
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Symmetric Patterns and Coordinations: Fast and Enhanced Representations of Verbs and Adjectives
Roy Schwartz
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Roi Reichart
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Ari Rappoport
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attr2vec: Jointly Learning Word and Contextual Attribute Embeddings with Factorization Machines
Fabio Petroni
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Vassilis Plachouras
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Timothy Nugent
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Jochen L. Leidner
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Post-Specialisation: Retrofitting Vectors of Words Unseen in Lexical Resources
Ivan Vulić
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Goran Glavaš
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Nikola Mrkšić
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Anna Korhonen
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Towards Qualitative Word Embeddings Evaluation: Measuring Neighbors Variation
Bénédicte Pierrejean
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Ludovic Tanguy
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On the Role of Seed Lexicons in Learning Bilingual Word Embeddings
Ivan Vulić
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Anna Korhonen
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Is “Universal Syntax” Universally Useful for Learning Distributed Word Representations?
Ivan Vulić
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Anna Korhonen
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Learning Cognitive Features from Gaze Data for Sentiment and Sarcasm Classification using Convolutional Neural Network
Abhijit Mishra
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Kuntal Dey
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Pushpak Bhattacharyya
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Explicit Retrofitting of Distributional Word Vectors
Goran Glavaš
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Ivan Vulić
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Predicting Word Embeddings Variability
Bénédicte Pierrejean
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Ludovic Tanguy
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There’s no ‘Count or Predict’ but task-based selection for distributional models
Martin Riedl
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Chris Biemann
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http://code.google.com/p/word2vec/
http://nlp.stanford.edu/projects/glove/
http://bitbucket.org/yoavgo/word2vecf
Field Of Study
Linguistic Trends
Distributional Semantics
Embeddings
Syntax
Task
Tagging
Chunking
Named Entity Recognition
Semantic Similarity
Sentiment Analysis
Coreference Resolution
Approach
Deep Learning
Language
Multilingual
English
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