通过用户生成内容分析曼谷旅游和活动数据

Naina Chugh, N. Phumchusri
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引用次数: 2

摘要

本文的首要目标是获得游客偏好的可见性,以及游客的需求是否得到满足。随着旅游业(T&T)行业成为全球经济的支柱,该行业变得更加饱和和竞争激烈,对T&T的见解现在比以往任何时候都至关重要。社交媒体和用户生成内容的兴起为通过用户生成内容系统分析游客偏好提供了机会。本文的重点是通过从TripAdvisor的在线旅游和活动评论中抓取用户生成的内容,了解泰国曼谷的旅游业。为了深入了解曼谷的游客偏好和旅游趋势,我们实施了各种分析,包括情感分析(收集游客观点)、关联规则挖掘(发现偏好模式)、自然语言处理(以及文本频率分析)(了解游客最常谈论的特征)。本文还开发了预测模型,使用逻辑回归来预测评论的5星评级和1星评级,目的是确定显著影响旅游/活动的位置和负面情绪的因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bangkok Tours and Activities Data Analysis via User-Generated Content
The overarching goal of this paper is to gain visibility on tourist preferences and whether or not the needs of tourists are being met. With the Travel and Tourism (T&T) sector being the backbone to the global economy and the sector becoming more saturated and competitive, insights on T&T are vital now, more than ever. The rise of social media and user-generated content has effectuated the opportunity for a systematic analysis of tourist preferences via user-generated content. This paper is focused on gaining insights of tourism in Bangkok, Thailand through user-generated content scraped from TripAdvisor's online reviews of tours and activities. In order to develop insights on tourist preferences and tourism trends in Bangkok, various analyses were implemented, including sentiment analysis to gather tourist point-of-view, association rules mining to find patterns of preferences, and natural language processing along with text frequency analysis to understand what features tourists are most frequently talking about. This paper also developed prediction models using logistic regression to forecast 5-start ratings and 1-star ratings of reviews - with the purpose of identifying factors that significantly affect position and negative sentiments on tours/activities.
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