Using tensor processing units to identify the relationship between hypothesis and premise: A case of natural language inference problem

Jhunthra, Srishti, Garg, Harshit and Gupta, Vedika (2024) Using tensor processing units to identify the relationship between hypothesis and premise: A case of natural language inference problem. In: Uncertainty in Computational Intelligence-Based Decision Making. Advanced Studies in Complex Systems . Elsevier, pp. 255-275. ISBN 9780443214752

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Abstract

Natural language processing (NLP) is a highly captivating area of study that has generated a substantial amount of research in modern times. Implementing multilingual harmful comment classification in the algorithm can provide a valuable advantage in analyzing comments, tweets, and other social media content related to a recognized topic. This will enhance the comprehension and examination of the miscommunication that occurred on many social media platforms regarding a specific topic, as well as the deterrence of deceitful remarks. The process of classifying multilingual harmful comments entails analyzing a hypothetical sentence that is formed based on an assumption. The suggested hypothetical language can be classified into one of three categories: it can be neutral, contradicting the known premise statement, or implying the premise. Natural language inference is a prominent topic in the field of NLP. Its objective is to determine the connection between two statements based on a given premise and hypothesis. Therefore, the research presents a model that aims to forecast the correlation between two claims. The prediction aids in determining whether the supplied hypothesis is in an entailment, neutral, or conflicting relationship with the given premise.

Item Type: Book Section
Keywords: Natural Language Processing (NLP) | Multilingual Harmful Comment Classification | Natural Language Inference (NLI) | Social Media Content Analysis | Premise-Hypothesis Relationship
Subjects: Physical, Life and Health Sciences > Computer Science
Social Sciences and humanities > Social Sciences > Research and Theory
JGU School/Centre: Jindal Global Business School
Depositing User: Dharmveer Modi
Date Deposited: 27 Nov 2024 16:59
Last Modified: 27 Nov 2024 16:59
Official URL: https://doi.org/10.1016/B978-0-443-21475-2.00008-4
URI: https://pure.jgu.edu.in/id/eprint/8830

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