Recognition of English information and semantic features based on SVM and machine learning

Author:

Li Man1,Bai Ruifang1

Affiliation:

1. School of Humanity and Education, Xi’an Eurasia University, Xi’an, China

Abstract

With the deepening of people’s research on event anaphora, a large number of methods will be used in the identification and resolution of event anaphora. Although there has been some progress in the resolution of the current event, the difficult problems have not yet been completely resolved. This study analyzes the English information anaphora resolution based on SVM and machine learning algorithms and uses the CNN three-layer network as the basis to model the structure. Moreover, this study improves the semantic features by adding semantic roles and analyzes and compares the performance of the improved semantic features with those before the improvement. In addition, this study combines semantic features to compare and analyze each feature combination and uses a dual candidate model to improve the system. Finally, this study analyzes the experimental results. The results show that the performance of the system using the dual candidate model is better than that of the single candidate model system.

Publisher

IOS Press

Subject

Artificial Intelligence,General Engineering,Statistics and Probability

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