Comprehensive Implementation of TextCNN for Enhanced Collaboration between Natural Language Processing and System Recommendation
- URL: http://arxiv.org/abs/2403.09718v1
- Date: Tue, 12 Mar 2024 07:25:53 GMT
- Title: Comprehensive Implementation of TextCNN for Enhanced Collaboration between Natural Language Processing and System Recommendation
- Authors: Xiaonan Xu, Zheng Xu, Zhipeng Ling, Zhengyu Jin, ShuQian Du,
- Abstract summary: This paper analyzes the application status of deep learning in the three core tasks of NLP.
It takes into account the challenges posed by adversarial techniques in text generation, text classification, and semantic parsing.
An empirical study on text classification tasks demonstrates the effectiveness of interactive integration training.
- Score: 1.7692743931394748
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Natural Language Processing (NLP) is an important branch of artificial intelligence that studies how to enable computers to understand, process, and generate human language. Text classification is a fundamental task in NLP, which aims to classify text into different predefined categories. Text classification is the most basic and classic task in natural language processing, and most of the tasks in natural language processing can be regarded as classification tasks. In recent years, deep learning has achieved great success in many research fields, and today, it has also become a standard technology in the field of NLP, which is widely integrated into text classification tasks. Unlike numbers and images, text processing emphasizes fine-grained processing ability. Traditional text classification methods generally require preprocessing the input model's text data. Additionally, they also need to obtain good sample features through manual annotation and then use classical machine learning algorithms for classification. Therefore, this paper analyzes the application status of deep learning in the three core tasks of NLP (including text representation, word order modeling, and knowledge representation). This content explores the improvement and synergy achieved through natural language processing in the context of text classification, while also taking into account the challenges posed by adversarial techniques in text generation, text classification, and semantic parsing. An empirical study on text classification tasks demonstrates the effectiveness of interactive integration training, particularly in conjunction with TextCNN, highlighting the significance of these advancements in text classification augmentation and enhancement.
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