TY - Generic T1 - Disaggregate Hotel Evaluation by Using Diverse Aspects from User Reviews T2 - 2019 IEEE International Conference on Big Data and Smart Computing (BigComp) Y1 - 2019 A1 - B. Devkota A1 - K. Kim A1 - C. Zhuang A1 - H. Miyazaki KW - Adaptation models KW - aspects KW - Coherence KW - coherent hotel aspects KW - customer satisfaction KW - data mining KW - Data models KW - disaggregate hotel evaluation KW - diverse aspects KW - Estimation KW - Feature extraction KW - fine-grained aspect level opinions KW - frequent noun-adjective co-occurrence statistics KW - hotel industry KW - hotel ranking KW - hotel reviews KW - latent aspects KW - Predictive models KW - purchase decision KW - statistical analysis KW - supervised methods KW - topic modeling KW - unsupervised learning KW - user attention KW - user reviews KW - word co-occurrence statistics KW - word embeddings AB - Experienced opinions about products and services can guide a potential user for a better purchase decision. Fine-grained aspect level opinions embedded within reviews must be explored to discover experienced users' latent opinion about the aspects (i.e. features of products like cost, value for money, etc.) and their relative importance. In this paper, we present an unsupervised approach for discovering coherent hotel aspects based on the user attention. This model effectively integrates techniques like topic modeling and word embeddings along with the frequent noun-adjective co-occurrence statistics to automatically discover coherent hotel aspects. Further supervised methods are used to understand the user's relative emphasis on the aspects and finally rank the hotels. This method does not assume any predefined seed words and discovers coherent level aspects by directly using user attention and word co-occurrence statistics in addition to topic modeling and word embeddings. The performance evaluation of this method was done by collecting various hotel reviews from multiple travel websites. Results show that the proposed methods improved the baseline performance up to 90%. Hence, the results thus obtained are very promising and indicate that the system is simple, scalable and most of all accurate in ranking hotels based on the latent aspects expressed in the user reviews. JF - 2019 IEEE International Conference on Big Data and Smart Computing (BigComp) ER -