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Lexical Simplification

The goal of Lexical Simplification is to replace complex words (typically words that are used less often in language and are therefore less familiar to readers) with their simpler synonyms, without infringing the grammaticality and changing the meaning of the text.

Source: Adversarial Propagation and Zero-Shot Cross-Lingual Transfer of Word Vector Specialization

Papers

Showing 101147 of 147 papers

TitleStatusHype
SimpleBERT: A Pre-trained Model That Learns to Generate Simple Words0
Simple PPDB: A Paraphrase Database for Simplification0
SimpleScience: Lexical Simplification of Scientific Terminology0
SIMPLEX-PB 2.0: A Reliable Dataset for Lexical Simplification in Brazilian Portuguese0
Simplification Using Paraphrases and Context-Based Lexical Substitution0
Simplifying Lexical Simplification: Do We Need Simplified Corpora?0
Simplifying metaphorical language for young readers: A corpus study on news text0
SimplifyUR: Unsupervised Lexical Text Simplification for Urdu0
Splitting Complex English Sentences0
Studying frequency-based approaches to process lexical simplification (Approches \`a base de fr\'equences pour la simplification lexicale) [in French]0
SV000gg at SemEval-2016 Task 11: Heavy Gauge Complex Word Identification with System Voting0
Synonym Replacement based on a Study of Basic-level Nouns in Swedish Texts of Different Complexity0
TALN at SemEval-2016 Task 11: Modelling Complex Words by Contextual, Lexical and Semantic Features0
Text Simplification as Tree Transduction0
Text Simplification from Professionally Produced Corpora0
Text simplification using synchronous dependency grammars: Generalising automatically harvested rules0
The CW Corpus: A New Resource for Evaluating the Identification of Complex Words0
The Whole is Greater than the Sum of its Parts: Towards the Effectiveness of Voting Ensemble Classifiers for Complex Word Identification0
Towards Automatic Lexical Simplification in Spanish: An Empirical Study0
Understanding the Lexical Simplification Needs of Non-Native Speakers of English0
UNT-SimpRank: Systems for Lexical Simplification Ranking0
UOW-SHEF: SimpLex -- Lexical Simplicity Ranking based on Contextual and Psycholinguistic Features0
USAAR at SemEval-2016 Task 11: Complex Word Identification with Sense Entropy and Sentence Perplexity0
What Makes a Concept Complex? Measuring Conceptual Complexity as a Precursor for Text Simplification0
Word Complexity Estimation for Japanese Lexical Simplification0
A Comparison of Techniques to Automatically Identify Complex Words.0
Word Complexity is in the Eye of the Beholder0
A Customizable Editor for Text Simplification0
AI-KU at SemEval-2016 Task 11: Word Embeddings and Substring Features for Complex Word Identification0
A Knowledge-Based Approach to Word Sense Disambiguation by distributional selection and semantic features0
A Lexical Simplification Tool for Promoting Health Literacy0
ALEXSIS-PT: A New Resource for Portuguese Lexical Simplification0
Align, Disambiguate and Walk: A Unified Approach for Measuring Semantic Similarity0
AmritaCEN at SemEval-2016 Task 11: Complex Word Identification using Word Embedding0
An Adaptable Lexical Simplification Architecture for Major Ibero-Romance Languages0
Anita: An Intelligent Text Adaptation Tool0
An LLM-Enhanced Adversarial Editing System for Lexical Simplification0
ANNLOR: A Na\" Notation-system for Lexical Outputs Ranking0
Approches d'analyse distributionnelle pour améliorer la désambiguïsation sémantique0
Assisted Lexical Simplification for French Native Children with Reading Difficulties0
Assisted Nominalization for Academic English Writing0
Automatic Lexical Simplification for Turkish0
Benchmarking Lexical Simplification Systems0
BERT-Based Simplification of Japanese Sentence-Ending Predicates in Descriptive Text0
Book Review: Automatic Text Simplification by Horacio Saggion0
Building Readability Lexicons with Unannotated Corpora0
CAMB at CWI Shared Task 2018: Complex Word Identification with Ensemble-Based Voting0
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