文本分类的零射击学习:超越传统技术的可分类性扩展

Muthu Palaniappan M, Adithya Vedhamani, Sundharakumar K B
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引用次数: 0

摘要

文本分类在组织和理解海量文本数据方面起着至关重要的作用。然而,传统的文本分类方法在处理未知类或新类时往往面临挑战。零射击学习(Zero-shot learning, ZSL)为这个问题提供了一个很有前途的解决方案,它支持将文本实例分类为训练期间没有遇到过的类。在一些应用程序中,ZSL有很多潜在的好处,强调了它处理新类和适应不断发展的领域的能力。在本文中,我们使用了AG新闻数据集,这是文本分类任务中常用的基准数据集。它由来自AG语料库的新闻文章组成,从四个不同的类别收集:世界,体育,商业和科学/技术。每件物品都被分配了一个标签,对应于其中一个类别。我们应用了最先进的深度学习算法,如卷积神经网络和循环神经网络,将其性能与零射击学习(ZSL)进行比较。ZSL被证明具有鲁棒性,并且在准确性和F1 Score方面表现优于其他算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Zero-Shot Learning For Text Classification: Extending Classifiability Beyond Conventional Techniques
Text classification plays a crucial role in organizing and understanding huge amounts of text data. However, traditional text classification methods often face challenges when dealing with unseen or novel classes. Zero-shot learning (ZSL) offers a promising solution to this problem by enabling the classification of text instances into classes that have not been encountered during training. There is a plethora of potential benefits of ZSL in several applications, emphasizing its ability to handle new classes and adapt to evolving domains. In this paper, we have used the AG news dataset which is a commonly used benchmark dataset for text classification tasks. It consists of news articles from the AG's corpus, collected from four different categories: World, Sports, Business, and Science/Technology. Each article is assigned a label corresponding to one of these categories. We applied state-of-the-art deep learning algorithms such as Convolutional Neural Networks and Recurrent Neural Networks to compare the performance with Zero Shot Learning (ZSL). ZSL proved to be robust and performed better compared to the other algorithms in terms of accuracy and F1 Score.
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