Recent years have witnessed a rapid explosion of online information sources about restaurants, and the selection of an appropriate restaurant has become a tedious and time-consuming task. A number of online platforms allow users to share their experiences by rating restaurants based on more than one criterion, such as food, service, and value. For online users who do not have enough information about suitable restaurants, ratings can be decisive factors when choosing a restaurant. Thus, personalized systems such as recommender systems are needed to infer the preferences of each user and then satisfy those preferences. Specifically, multi-criteria recommender systems can utilize the multi-criteria ratings of users to learn their preferences ...
It is hard to choose places to go from an endless number of options for some specific circumstances....
People nowadays find it difficult to identify the best places to spend their leisure time performing...
Recommender systems are a valuable means for online users to find items of interest in situations wh...
Several online restaurant applications, such as TripAdvisor and Yelp, provide potential consumers wi...
Recommender systems have cemented themselves in the daily online activities of most people, and they...
The application of machine learning and Artificial Intelligence system in the food industry is not m...
Recommender systems, also known as recommender engines, have become an important research area and a...
Currently, to find a restaurant recommendation, a user may go online and visit one of many popular r...
The wide adoption of location-based services provide the potential to understand people's mobility p...
Previous research shows that consumers use online reviews for a variety of reasons. For many product...
Recommendation systems aim to help users make decisions more efficiently. The most widely used metho...
In this paper we propose a multi-criteria recommender system based on collaborative filtering (CF) t...
Today, exploiting sentiment analysis has become popular in designing recommender systems in various ...
Recommender systems aim to assist web users to find only relevant information to their needs rather ...
In 2018, the Ministry of Industry (Kemenperin) stated that the food and beverage sector contributed ...
It is hard to choose places to go from an endless number of options for some specific circumstances....
People nowadays find it difficult to identify the best places to spend their leisure time performing...
Recommender systems are a valuable means for online users to find items of interest in situations wh...
Several online restaurant applications, such as TripAdvisor and Yelp, provide potential consumers wi...
Recommender systems have cemented themselves in the daily online activities of most people, and they...
The application of machine learning and Artificial Intelligence system in the food industry is not m...
Recommender systems, also known as recommender engines, have become an important research area and a...
Currently, to find a restaurant recommendation, a user may go online and visit one of many popular r...
The wide adoption of location-based services provide the potential to understand people's mobility p...
Previous research shows that consumers use online reviews for a variety of reasons. For many product...
Recommendation systems aim to help users make decisions more efficiently. The most widely used metho...
In this paper we propose a multi-criteria recommender system based on collaborative filtering (CF) t...
Today, exploiting sentiment analysis has become popular in designing recommender systems in various ...
Recommender systems aim to assist web users to find only relevant information to their needs rather ...
In 2018, the Ministry of Industry (Kemenperin) stated that the food and beverage sector contributed ...
It is hard to choose places to go from an endless number of options for some specific circumstances....
People nowadays find it difficult to identify the best places to spend their leisure time performing...
Recommender systems are a valuable means for online users to find items of interest in situations wh...