克罗地亚酒店评论的信息提取和情感分析

IF 0.3 Q3 SOCIAL SCIENCES, INTERDISCIPLINARY Zbornik Veleucilista u Rijeci-Journal of the Polytechnics of Rijeka Pub Date : 2023-01-01 DOI:10.31784/zvr.11.1.5
S. Šuman, Milan Vignjević, T. Car
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引用次数: 0

摘要

今天,业务系统内部和周围的数据量需要新的数据收集和处理方法。从酒店评论中发现情感有助于改善酒店服务和整体在线声誉,因为潜在客人在预订前大多会查阅现有的酒店评论。因此,我们在Booking.com平台上研究了2019年和2021年(COVID-19大流行开始前后)克罗地亚旅游地区克罗地亚酒店(三星级、四星级和五星级)的酒店评论。亚得里亚海沿岸的酒店在几个最受欢迎的城市中被选中:罗维尼、普拉、克尔克、扎达尔、Šibenik、斯普利特、布拉伊奇、赫瓦尔、马卡尔斯卡和杜布罗夫尼克。根据整体评价分为四组,每组又分为正面和负面。因此,确定了四组中每组的正面和负面评论中存在的元素。使用文本处理方法,分别确定了2019年和2021年旅游季节最常见的单词和表达(单字母和双字母),这些单词和表达可以帮助酒店管理管理住宿服务和实现竞争优势。在第二部分的工作中,在所有收集到的评论上建立了一个机器学习(ML)模型,将评论分为正面和负面。在结果和讨论部分中描述了应用具有精度和召回性能的三种不同ML算法的结果。
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Information extraction and sentiment analysis of hotel reviews in Croatia
Today, the amount of data in and around the business system requires new ways of data collection and processing. Discovering sentiments from hotel reviews helps improve hotel services and overall online reputation, as potential guests largely consult existing hotel reviews before booking. Therefore, hotel reviews of Croatian hotels (categories three, four, and five stars) in tourist regions of Croatia were studied on the Booking.com platform for the years 2019 and 2021 (before and after the start of the pandemic COVID-19). Hotels on the Adriatic coast were selected in the cities that were mentioned by several sources as the most popular: Rovinj, Pula, Krk, Zadar, Šibenik, Split, Brač, Hvar, Makarska, and Dubrovnik. The reviews were divided into four groups according to the overall rating and further divided into positive and negative in each group. Therefore, the elements that were present in the positive and negative reviews of each of the four groups were identified. Using the text processing method, the most frequent words and expressions (unigrams and bigrams), separately for the 2019 and 2021 tourism seasons, that can be useful for hotel management in managing accommodation services and achieving competitive advantages were identified. In the second part of the work, a machine learning (ML) model was built over all the collected reviews, classifying the reviews into positive or negative. The results of applying three different ML algorithms with precision and recall performance are described in the Results and Discussion section.
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