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Early Warning of Real Estate Market Development Risk Based on Network News Topic Mining and Neural Network

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  • Shuli Shen
  • Wen-Tsao Pan

Abstract

With the rapid development of the information technology, mining news content efficiently is a difficult problem faced by the government and enterprises. The classification, clustering, and prediction of neural network are used in news mining. A keyword based on neural network and word vector are proposed as a text feature model, and the model is compared with other neural network models. This paper studies the vectorization of text for similarity recommendation and introduces two models: word vector model and text vector model doc2vec based on neural network. In the model with word vector as feature vector, the recommendation accuracy is about 75.35%, doc2vec model is about 44.5%, and the recommendation accuracy of the model with keyword as text is about 88.61%. The recommendation accuracy is about 91%, and the performance has greatly improved. The more the number of keywords, the better the recommendation effect of the model. When the number is about 20, the improvement of the recommendation effect tends to be gentle, and the continuous increase of the number of keywords will increase the operation time of the model. It is proposed that the keyword and word vector based on neural network together as the text vector model can more accurately mine news data, quickly obtain news information, and make prediction and early warning for many industries such as the real estate industry.

Suggested Citation

  • Shuli Shen & Wen-Tsao Pan, 2022. "Early Warning of Real Estate Market Development Risk Based on Network News Topic Mining and Neural Network," Mathematical Problems in Engineering, Hindawi, vol. 2022, pages 1-9, July.
  • Handle: RePEc:hin:jnlmpe:4980725
    DOI: 10.1155/2022/4980725
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