Ontologies and knowledge models have gained more recognition because of their extensive use in recommender systems. The lack of automatic approaches in ontology engineering, however, becomes a challenge to fulfill increasing needs for such knowledge models in the field of tourism. In this study, a system for building tourism knowledge models from online reviews is proposed. The main contribution of the study is the application of topic modeling to build a knowledge model that, in turn, allows for an automated labeling process to train classifiers. Given a collection of unlabeled tourism online reviews, Latent Dirichlet Allocation (LDA) is applied to automatically label each document. Each topic discovered by LDA is labeled with one specific...
The hospitality industry has faced unprecedented challenges with the outbreak of Covid-19, which has...
This presentation covers a study conducted on tourism in Ethiopia. The study used an Ontology approa...
This paper presents a machine learning approach involving tourists’ electronic word of mouth (eWOM) ...
In this paper, we present a tourism recommender framework based on the cooperation of ontological kn...
The Users regularly share their views on services through internet reviews. Digital tourism allows t...
In this present study, we have found that the terms of linguistic methods (POS) gives higher releva...
Recommender system (RS) is used to overcome the problem of information overload over the World Wid...
The study and the practice of knowledge management have grown rapidly. Tourism, although it is a pio...
Recently, more personalized travel methods have emerged in the tourism industry, such as individual ...
A tourist has time and budget limitations; hence, he needs to select points of interest (POIs) optim...
Knowledge is awareness or familiarity gained by experiences of facts, data, and situations. Knowledg...
As an important infrastructure in the era of big data, the knowledge graph can integrate and manage ...
The main goal of this dissertation is to build ontology for tourism. Ontological semantics is an app...
Tourism industry plays a crucial role in the economics growth in countries of South East Asia and he...
Cultural Tourism is a problem-specific area of the tourism domain therefore being the subject of enq...
The hospitality industry has faced unprecedented challenges with the outbreak of Covid-19, which has...
This presentation covers a study conducted on tourism in Ethiopia. The study used an Ontology approa...
This paper presents a machine learning approach involving tourists’ electronic word of mouth (eWOM) ...
In this paper, we present a tourism recommender framework based on the cooperation of ontological kn...
The Users regularly share their views on services through internet reviews. Digital tourism allows t...
In this present study, we have found that the terms of linguistic methods (POS) gives higher releva...
Recommender system (RS) is used to overcome the problem of information overload over the World Wid...
The study and the practice of knowledge management have grown rapidly. Tourism, although it is a pio...
Recently, more personalized travel methods have emerged in the tourism industry, such as individual ...
A tourist has time and budget limitations; hence, he needs to select points of interest (POIs) optim...
Knowledge is awareness or familiarity gained by experiences of facts, data, and situations. Knowledg...
As an important infrastructure in the era of big data, the knowledge graph can integrate and manage ...
The main goal of this dissertation is to build ontology for tourism. Ontological semantics is an app...
Tourism industry plays a crucial role in the economics growth in countries of South East Asia and he...
Cultural Tourism is a problem-specific area of the tourism domain therefore being the subject of enq...
The hospitality industry has faced unprecedented challenges with the outbreak of Covid-19, which has...
This presentation covers a study conducted on tourism in Ethiopia. The study used an Ontology approa...
This paper presents a machine learning approach involving tourists’ electronic word of mouth (eWOM) ...