Abstract
Metaphor recognition is the bottleneck of natural language processing, and the metaphor recognition for A-is-B mode is the difficulty of metaphor recognition. Compared with phrase recognition, the metaphor recognition for A-is-B mode is more flexible and difficult. To solve this difficult problem, the paper proposes a feature-based recognition method. First, the metaphor recognition problem for A-is-B model is transformed into a classification problem, then four sets of features of upper and lower position, sentence model, class, and Word2Vec are calculated respectively, and feature sets are constructed by using these four sets of features. The experiment uses the SVM model classifier and the neural network classifier to realize the metaphor recognition for the A-is-B mode. The experimental results show that the method using neural network classifier method has better accuracy and recall rate, 96.7% and 93.1%, respectively, but it takes more time to predict a sentence. According to the analysis of the experimental results of the two classifiers, the improved method achieved good results.
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References
Koetter, R., Médard, M.: An algebraic approach to network coding. IEEE/ACM Trans. Network. 11(5), 782–795 (2003)
Lakoff, G., Johnson, M.: Metaphors We Live By. University of Chicago Press, Chicago (1980)
Xu, Y.: Recognition of Chinese metaphor phenomenon based on maximum entropy model. Comput. Eng. Sci. (04), 95–97+103 (2007). (in Chinese)
Liu, C., Wang, J.: Research on metaphor recognition based on semantic annotation tool Wmatrix. Teach. Foreign Lang. 02, 15–21 (2017). (in Chinese)
Su, C., Fu, Z., Zheng, F., Chen, Y.: Metaphor recognition method based on dynamic classification. J. Softw. (07), 1–15 (2019). (in Chinese)
Liu, J.: Research on metaphor recognition based on machine learning algorithm. Nanjing Normal University (2011). Instructor: Qu, W. (in Chinese)
Bai, Z.: Research on Chinese verb metaphor recognition method based on subject model. Hangzhou University of Electronic Science and Technology (2016). Instructor: Wang, X. (in Chinese)
Zeng, H., Zhou, C., Chen, Y., Shi, X.: Chinese metaphor computation based on feature automatic selection method. J. Xiamen Univ. (Nat. Sci.) 55(03), 406–412 (2016). (in Chinese)
Fu, J., Wang, S., Cao, C.: A Chinese metaphor phrase recognition method based on combination of clustering and classification. J. Chin. Inf. Process. 32(02), 22–28+49 (2018). (in Chinese)
Huang, X., Zhang, H., Lu, W., Wang, R., Wu, W.: A Chinese metaphor recognition method based on word abstraction. Mod. Libr. Inf. Technol. 04, 34–40 (2015). (in Chinese)
Huang, X., Li, Y., Wang, R., Wang, X., Zhai, Z.: Metaphor recognition based on convolutional neural network and SVM classifier. Data Anal. Knowl. Discov. 2(10), 77–83 (2018). (in Chinese)
Liu, L., Cao, C., Wang, H., Chen, W.: A subordinate concept acquisition method based on the “Yes” model. Comput. Sci. 09, 146–151 (2006). (in Chinese)
Liu, L., Cao, C.: Verification method of upper and lower position relationship based on mixed features. Comput. Eng. (14), 12–13+16 (2008). (in Chinese)
Mikolov, T., et al.: Efficient estimation of word representations in vector space. Computer Science. arXiv (2013). http://arxiv.org/abs/1301.3781v3
Schmidhuber, J.: Deep learning in neural networks: an overview. Neural Netw. 61, 85–117 (2015)
Han, J., et al.: Spatial clustering methods in data mining: a survey. Geogr. Data Min. Knowl. Discov. (2001)
Mikolov, T., Chen, K., Corrado, G., et al.: Efficient estimation of word representations in vector space [OL]. arXiv Preprint arXiv:1301.3781 (2013)
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Wang, Wm., Gu, Rr., Fu, Sf., Wang, Ds. (2019). A New Method of Metaphor Recognition for A-is-B Model in Chinese Sentences. In: Cui, Z., Pan, J., Zhang, S., Xiao, L., Yang, J. (eds) Intelligence Science and Big Data Engineering. Big Data and Machine Learning. IScIDE 2019. Lecture Notes in Computer Science(), vol 11936. Springer, Cham. https://doi.org/10.1007/978-3-030-36204-1_5
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