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Hits 1 – 4 of 4
1
Predicting the Success of Internet Social Welfare Crowdfunding Based on Text Information
Xi Chen; Hao Ding; Shaofen Fang; Wei Chen
In: Applied Sciences; Volume 12; Issue 3; Pages: 1572 (2022)
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2
How We Failed in Context: A Text-Mining Approach to Understanding Hotel Service Failures
Shuyue Huang; Lena Jingen Liang; Hwansuk Chris Choi
In: Sustainability; Volume 14; Issue 5; Pages: 2675 (2022)
Abstract:
Service failure is inevitable. Although empirical studies on the outcomes and processes of service failures have been conducted in the hotel industry, the findings need more exploration to understand how different segments perceive service failures and the associated emotions differently. This approach enables hotel managers to develop more effective strategies to prevent service failures and implement more specific service-recovery actions. For analysis, we obtained a nine-year (2010–2018) longitudinal dataset containing 1224 valid respondents with 73,622 words of textual content from a property affiliated with an international hotel brand in Canada. A series of text-mining and natural language processing (NLP) analyses, including frequency analysis and word cloud, sentiment analysis, word correlation, and TF–IDF analysis, were conducted to explore the information hidden in the massive amount of unstructured text data. The results revealed the similarities and differences between groups (i.e., men vs. women and leisure vs. business) in reporting service failures. We also carefully examined different meanings of words that emerged from the text-mining results to ensure a more comprehensive understanding of the guest experience.
Keyword:
gender
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group difference
;
purpose of stay
;
sentiment analysis
;
service failure
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text-mining approach
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TF–IDF analysis
;
word correlation
;
word frequency analysis
URL:
https://doi.org/10.3390/su14052675
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3
Tracing the Legitimacy of Artificial Intelligence – A Media Analysis, 1980-2020
Korneeva, Ekaterina
;
Salge, Torsten Oliver
. - 2022
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4
Dynamics of prescriptivism and lexical borrowings in Contemporary French
Zsombok, Gyula
. - 2022
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