Abstract

The current Internet data explosion is expecting an ever-higher demand for text emotion analysis that greatly facilitates public opinion analysis and trend prediction, among others. Therefore, this paper proposes to use a dual-channel convolutional neural network (DCNN) algorithm to analyze the semantic features of English text big data. Following the analysis of the effect of CNN, artificial neural network (ANN), and recurrent neural network (RNN) on English text data analysis, the more effective long short-term memory (LSTM) and the gated recurrent unit (GRU) neural network (NN) are introduced, and each network is combined with the dual-channel CNN, respectively, and comprehensively analyzed under comparative experiments. Second, the semantic features of English text big data are analyzed through the improved SO-pointwise mutual information (SO-PMI) algorithm. Finally, the ensemble dual-channel CNN model is established. Under the comparative experiment, GRU NN has a better feature detection effect than LSTM NN, but the performance increase from dual-channel CNN to GRU NN + dual-channel CNN is not obvious. Under the comparative analysis of GRU NN + dual-channel CNN model and LSTM NN + dual-channel CNN model, GRU NN + dual-channel CNN model ensures the high accuracy of semantic feature analysis and improves the analysis speed of the model. Further, after the attention mechanism is added to the GRU NN + dual-channel CNN model, the accuracy of semantic feature analysis of the model is improved by nearly 1.3%. Therefore, the ensemble model of GRU NN + dual-channel CNN + attention mechanism is more suitable for semantic feature analysis of English text big data. The results will help the e-commerce platform to analyze the evaluation language and semantic features for the current network English short texts.

Highlights

  • Statistics indicate that over half of the global publications are in English, and 80% of the web pages or online information is in English

  • The application of the dual-channel convolutional neural network (CNN) algorithm is mainly studied for the semantic feature analysis of English text big data

  • long short-term memory (LSTM) neural network (NN) and gated recurrent unit (GRU) NN are introduced, and their effects on feature analysis of English text data are analyzed. en, the improved SO-pointwise mutual information (SO-point mutual information (PMI)) algorithm is used to analyze the semantic features of English text big data

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Summary

Introduction

Statistics indicate that over half of the global publications are in English, and 80% of the web pages or online information is in English. Erefore, the research on new English text semantic feature extraction and understanding methods can solve such problems in artificial intelligence (AI) as text classification, machine translation (ML), automatic question answering, text generation, and humancomputer interaction (HCI) and promote the interlanguage communication [2, 3]. With the technological maturity of natural language processing (NLP) in AI, automatic English text semantics can quickly understand the international situation, grasp the orientation of international opinion, and ensure national information security. Erefore, with the development from natural language processing (NLP) to natural language understanding (NLU), people's attention has shifted to semantic understanding methods and text semantic feature extraction mechanisms [4]. The realization of English semantic feature analysis is mainly studied based on big data of English text using the dual-channel convolutional neural network (CNN) algorithm. Computational Intelligence and Neuroscience to the dual-channel CNN algorithm, thereby greatly improving the accuracy of the model

Related Works
Affective Analysis of English Texts
Data Processing
Improved Dual-Channel CNN Model
Analysis of Experimental Results
Findings
Conclusion
Full Text
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