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Word Embeddings

Word embedding is the collective name for a set of language modeling and feature learning techniques in natural language processing (NLP) where words or phrases from the vocabulary are mapped to vectors of real numbers.

Techniques for learning word embeddings can include Word2Vec, GloVe, and other neural network-based approaches that train on an NLP task such as language modeling or document classification.

( Image credit: Dynamic Word Embedding for Evolving Semantic Discovery )

Papers

Showing 37513760 of 4002 papers

TitleStatusHype
Finding Convincing Arguments Using Scalable Bayesian Preference LearningCode0
A Self-supervised Representation Learning of Sentence Structure for Authorship AttributionCode0
xSense: Learning Sense-Separated Sparse Representations and Textual Definitions for Explainable Word Sense NetworksCode0
Simple Unsupervised Similarity-Based Aspect ExtractionCode0
SimpLex: a lexical text simplification architectureCode0
The Mixing method: low-rank coordinate descent for semidefinite programming with diagonal constraintsCode0
CharNER: Character-Level Named Entity RecognitionCode0
A Robust Self-Learning Method for Fully Unsupervised Cross-Lingual Mappings of Word Embeddings: Making the Method Robustly Reproducible as WellCode0
Characterizing the impact of geometric properties of word embeddings on task performanceCode0
Fine-tuning Tree-LSTM for phrase-level sentiment classification on a Polish dependency treebank. Submission to PolEval task 2Code0
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