AbstractIn this paper, we propose a new recommendation algorithm, which extends the idea of linkage measure to recommendation in bipartite network, and incorporate domain knowledge with topological property in recommendation process. Through calculating domain similarities between products, we weigh the products recommended to potential customer with larger weights, whose categories are more close to the categories meeting with users’ preference, so as to improve the recommendation quality. Our preliminary experimental results based on a retail transaction dataset indicate that domain-based link prediction measures achieved better performance than general linkage measures algorithms
AbstractThis paper proposes a new personalized recommendation model based on domain knowledge to emp...
With the development of communication networks and rapid growth of their applications, huge amount o...
International audienceRecommendation plays a key role in e-commerce and in the entertainment industr...
AbstractIn this paper, we propose a new recommendation algorithm, which extends the idea of linkage ...
In the field of ecommerce, most recommendation algorithms are based on user-item bipartite graph net...
AbstractIn this paper, we attempt to use the rating information to adjust linkage-weight between nod...
With the continuous digitalization of the world, massive amounts of data are produced every second. ...
Recommending relevant items to users has become an important task in many systems due to the increas...
Online user reviews on a product, service or content has been widely used for recommender systems wi...
Recommender systems automate the process of recommending products and services to customers based on...
We evaluate a wide range of recommendation algorithms on e-commerce-related datasets. These algorith...
Abstract—Recommendation can be reduced to a sub-problem of link prediction, with specific nodes (use...
Recommender systems apply statistical and knowledge discovery techniques to the problem of making pr...
The explosive growth of the world-wide-web and the emergence of e-commerce has led to the developmen...
Recommender systems can provide valuable services in a digital library environment, as demonstrated ...
AbstractThis paper proposes a new personalized recommendation model based on domain knowledge to emp...
With the development of communication networks and rapid growth of their applications, huge amount o...
International audienceRecommendation plays a key role in e-commerce and in the entertainment industr...
AbstractIn this paper, we propose a new recommendation algorithm, which extends the idea of linkage ...
In the field of ecommerce, most recommendation algorithms are based on user-item bipartite graph net...
AbstractIn this paper, we attempt to use the rating information to adjust linkage-weight between nod...
With the continuous digitalization of the world, massive amounts of data are produced every second. ...
Recommending relevant items to users has become an important task in many systems due to the increas...
Online user reviews on a product, service or content has been widely used for recommender systems wi...
Recommender systems automate the process of recommending products and services to customers based on...
We evaluate a wide range of recommendation algorithms on e-commerce-related datasets. These algorith...
Abstract—Recommendation can be reduced to a sub-problem of link prediction, with specific nodes (use...
Recommender systems apply statistical and knowledge discovery techniques to the problem of making pr...
The explosive growth of the world-wide-web and the emergence of e-commerce has led to the developmen...
Recommender systems can provide valuable services in a digital library environment, as demonstrated ...
AbstractThis paper proposes a new personalized recommendation model based on domain knowledge to emp...
With the development of communication networks and rapid growth of their applications, huge amount o...
International audienceRecommendation plays a key role in e-commerce and in the entertainment industr...