STEMM Institute Press
Science, Technology, Engineering, Management and Medicine
Construction of Intelligent Online Tourism English Model Corpus
DOI: https://doi.org/10.62517/jtm.202413205
Author(s)
Jianzhou Cui
Affiliation(s)
Wuxi City College of Vocational Technology, Wuxi, Jiangsu, China
Abstract
In the context of social informatization advancing and competition in the tourism industry intensifying, tourism English service has become a crucial communication tool. Utilizing online corpora, which are built upon language and textual foundations, enables the sharing of linguistic information. As the tourism sector thrives, the importance of tourism English services is increasingly highlighted. To meet the demand for high-caliber talent driven by societal progress, China has implemented ongoing educational reforms, introducing courses like online learning and remote access in domestic colleges and universities. Concurrently, intelligence has emerged as a key research focus in the forthcoming information era. Given this backdrop, the efficient utilization of contemporary information technology to develop an intelligent online tourism English model corpus is a subject of substantial interest. This study employs a method of questionnaire surveys and data analysis to explore the creation of an effective, practical, and compatible intelligent online travel English model corpus based on ESP (English for Specific Purposes) technology. Furthermore, the aim is to better cater to users' personalized resource needs. According to the survey findings, a majority of respondents advocate for the construction of an intelligent online travel English model corpus, recognizing its crucial role in advancing translation work and related fields.
Keywords
ESP; Corpus; Tourism English; Intelligent Model
References
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