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Application intelligent search and recommendation system based on speech recognition technology

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Abstract

With the progress of science and technology, artificial intelligence as the emerging tool has been deeply into our lives. The application of modern intelligent equipment is more and more extensive, and also inseparable from our lives. The mobile intelligent terminal represented by smart phone is a powerful intelligent computing and networking device, which has more perception and interaction capabilities. Due to the emergence of a large number of application software, it is not easy to find and get the app that you really need. Therefore, this paper uses speech recognition technology to build an app intelligent search and recommendation system. We designed the system from the levels of speech information extraction, analysis and finalized recommendation. Experimental results show that the proposed method is more efficient and intelligent.

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Correspondence to Harry Haoxiang Wang.

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Jiang, J., Wang, H.H. Application intelligent search and recommendation system based on speech recognition technology. Int J Speech Technol 24, 23–30 (2021). https://doi.org/10.1007/s10772-020-09703-0

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