Matches in SemOpenAlex for { <https://semopenalex.org/work/W3214468409> ?p ?o ?g. }
- W3214468409 endingPage "100903" @default.
- W3214468409 startingPage "100903" @default.
- W3214468409 abstract "This study utilizes machine learning (ML) natural language processing (NLP) algorithms and statistical methods in order to measure the impact that qualitative textual reviews have on booking intentions for accommodations. Using over 400,000 online reviews from 1256 accommodations in South Korea, latent Dirichlet allocation (LDA) is used to determine the topic of the review content, convolutional neural networks (CNNs) are used to identify the valence of the reviews, and spatial probit models are used to determine the impact of the review content and valence on booking intention, while controlling for several other variables. It is found that positive reviews about an accommodation’s ambiance, value, service, front office, accessibility, surrounding neighborhood and room capacity result in significantly higher booking intentions, while negative reviews in the service, front office and surrounding neighborhood result in lower probability of booking. A number of explanatory variables also have varying effects on booking intentions." @default.
- W3214468409 created "2021-11-22" @default.
- W3214468409 creator A5017485542 @default.
- W3214468409 creator A5026577834 @default.
- W3214468409 creator A5079756810 @default.
- W3214468409 date "2021-10-01" @default.
- W3214468409 modified "2023-10-14" @default.
- W3214468409 title "The impact of latent topic valence of online reviews on purchase intention for the accommodation industry" @default.
- W3214468409 cites W1160959426 @default.
- W3214468409 cites W1482631479 @default.
- W3214468409 cites W1608349571 @default.
- W3214468409 cites W1708393801 @default.
- W3214468409 cites W1973265641 @default.
- W3214468409 cites W1975158701 @default.
- W3214468409 cites W1982657993 @default.
- W3214468409 cites W1984884063 @default.
- W3214468409 cites W1987313171 @default.
- W3214468409 cites W1988884542 @default.
- W3214468409 cites W1990916761 @default.
- W3214468409 cites W1991622328 @default.
- W3214468409 cites W1994833445 @default.
- W3214468409 cites W2001082470 @default.
- W3214468409 cites W2006604430 @default.
- W3214468409 cites W2011205802 @default.
- W3214468409 cites W2012327977 @default.
- W3214468409 cites W2012662675 @default.
- W3214468409 cites W2014101371 @default.
- W3214468409 cites W2029095234 @default.
- W3214468409 cites W2030387474 @default.
- W3214468409 cites W2040686047 @default.
- W3214468409 cites W2044905471 @default.
- W3214468409 cites W2058124215 @default.
- W3214468409 cites W2060298340 @default.
- W3214468409 cites W2066116976 @default.
- W3214468409 cites W2068803646 @default.
- W3214468409 cites W2078831478 @default.
- W3214468409 cites W2079200594 @default.
- W3214468409 cites W2079223345 @default.
- W3214468409 cites W2093605115 @default.
- W3214468409 cites W2099113722 @default.
- W3214468409 cites W2104304621 @default.
- W3214468409 cites W2118898598 @default.
- W3214468409 cites W2119194442 @default.
- W3214468409 cites W2123865205 @default.
- W3214468409 cites W2132314509 @default.
- W3214468409 cites W2139783857 @default.
- W3214468409 cites W2145264991 @default.
- W3214468409 cites W2149888743 @default.
- W3214468409 cites W2166930762 @default.
- W3214468409 cites W2169955073 @default.
- W3214468409 cites W2174706414 @default.
- W3214468409 cites W2276339214 @default.
- W3214468409 cites W2293447313 @default.
- W3214468409 cites W2294363208 @default.
- W3214468409 cites W2300796873 @default.
- W3214468409 cites W2520828129 @default.
- W3214468409 cites W2738812872 @default.
- W3214468409 cites W2767327746 @default.
- W3214468409 cites W2768505907 @default.
- W3214468409 cites W2789809540 @default.
- W3214468409 cites W2974317623 @default.
- W3214468409 cites W2979963738 @default.
- W3214468409 cites W2984079047 @default.
- W3214468409 cites W3009072477 @default.
- W3214468409 cites W3020113936 @default.
- W3214468409 cites W3060714964 @default.
- W3214468409 cites W3121845706 @default.
- W3214468409 cites W3122687407 @default.
- W3214468409 cites W3123091093 @default.
- W3214468409 cites W3124946654 @default.
- W3214468409 cites W4229742094 @default.
- W3214468409 doi "https://doi.org/10.1016/j.tmp.2021.100903" @default.
- W3214468409 hasPublicationYear "2021" @default.
- W3214468409 type Work @default.
- W3214468409 sameAs 3214468409 @default.
- W3214468409 citedByCount "5" @default.
- W3214468409 countsByYear W32144684092022 @default.
- W3214468409 countsByYear W32144684092023 @default.
- W3214468409 crossrefType "journal-article" @default.
- W3214468409 hasAuthorship W3214468409A5017485542 @default.
- W3214468409 hasAuthorship W3214468409A5026577834 @default.
- W3214468409 hasAuthorship W3214468409A5079756810 @default.
- W3214468409 hasConcept C112698675 @default.
- W3214468409 hasConcept C121332964 @default.
- W3214468409 hasConcept C144133560 @default.
- W3214468409 hasConcept C149782125 @default.
- W3214468409 hasConcept C154945302 @default.
- W3214468409 hasConcept C15744967 @default.
- W3214468409 hasConcept C157660682 @default.
- W3214468409 hasConcept C162853370 @default.
- W3214468409 hasConcept C166957645 @default.
- W3214468409 hasConcept C168900304 @default.
- W3214468409 hasConcept C169760540 @default.
- W3214468409 hasConcept C171686336 @default.
- W3214468409 hasConcept C18918823 @default.
- W3214468409 hasConcept C205649164 @default.
- W3214468409 hasConcept C33923547 @default.
- W3214468409 hasConcept C41008148 @default.