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Paraphrase identification using collaborative adversarial networks

Jafar A. Alzubi, Rachna Jain, Abhishek Kathuria, Anjali Khandelwal, Anmol Saxena, Anubhav Singh

2020Journal of Intelligent & Fuzzy Systems32 citationsDOI

Abstract

The paper presents a Collaborative Adversarial Network (CAN) model for paraphrase identification, which is a collaborative network holding generator that is pitted against an adversarial network called discriminator. There has been tremendous research work and countless examinations done on sentence similarity demonstration. Learning and identifying the constant highlights, specifically in various areas and domains is the main focus of paraphrase identification. It Involves the capture of regular highlights between two sentences and the community-oriented learning upon traditional ill-disposed and adversarial learning for common feature extraction. The model outperforms the MaLSTM model, which is the baseline model, and also proves to be comparable to many of the state-of-the-art techniques.

Topics & Concepts

ParaphraseAdversarial systemComputer scienceIdentification (biology)DiscriminatorArtificial intelligenceFocus (optics)Generator (circuit theory)Machine learningSimilarity (geometry)Feature (linguistics)Natural language processingPower (physics)LinguisticsTelecommunicationsOpticsBiologyImage (mathematics)BotanyQuantum mechanicsPhysicsDetectorPhilosophyAdvanced Text Analysis TechniquesTopic ModelingNatural Language Processing Techniques
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