基于机器学习的成对问题匹配分析

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引用次数: 0

摘要

在自然语言处理(NLP)和机器学习领域,具有挑战性的任务是检测具有语义精度的重复问题对。我们的研究努力打造一个尖端的模型,能够分辨出两个问题,尽管它们的措辞、拼写或语法变化不同,在数字论坛或搜索引擎上是否有共同的意图。本研究的一个重要方面涉及使用精心策划的标记问题对数据集创建和训练示例模型,每个问题对都被注释为重复或不同的实体。通过利用最先进的NLP技术,我们渴望建立一个非常准确的模型,通过促进重复问题的识别,彻底改变用户的搜索体验。这项开创性的研究为更精细和增强的方法铺平了道路,以解决问题对上下文中的语义相似性的挑战
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Analysis of Pairwise Question Matching with Machine Learning
n 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
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