An Analysis of Pairwise Question Matching with Machine Learning
Journal: International Journal of Advanced Trends in Computer Science and Engineering (IJATCSE) (Vol.12, No. 4)Publication Date: 2023-08-14
Authors : Ashika Tarekar Nitesh Hirulkar;
Page : 151-156
Keywords : Duplicate question; machine learning; natural language processing;
Abstract
In the realm of Natural Language Processing (NLP) and machine learning, lies the challenging quest to detect duplicate question pairs with semantic precision. Our research endeavors to craft a cutting-edge model capable of discerning whether two questions, despite their divergent phrasing, spelling, or grammatical variations, share a common intent on digital forums or search engines. A paramount facet of this study involves the creation and training of an exemplary model using a meticulously curated dataset of labeled question pairs, each annotated as either duplicates or distinct entities. By leveraging state-of-the-art NLP techniques, we aspire to build an exceptionally accurate model that will revolutionize the user search experience by facilitating the identification of duplicate questions. This pioneering research paves the way for a more refined and enhanced approach to tackle the challenges of semantic similarity in the context of question pairs
Other Latest Articles
- Arduino Based Real-Time Face Recognition And Tracking System
- Comparative Review of Credit Card Fraud Detection using Machine Learning and Concept Drift Techniques
- The Effect of Savings and Female Labor Force Participation on GDP in KSA and Kuwait during the period 1999-2019
- CIDOC CRM as the basis of the Electronic State Register of Immovable Cultural Heritage of Ukraine
- Analysis of damage to objects from the influence of subsidence soils
Last modified: 2023-08-15 18:56:35