Network-based similarity measures have found wide applications in recommendation algorithms and made significant contributions for uncovering users’ potential interests. However, existing measures are generally biased in terms of popularity, that the popular objects tend to have more common neighbours with others and thus are considered more similar to others. Such popularity bias of similarity quantification will result in the biased recommendations, with either poor accuracy or poor diversity. Based on the bipartite network modelling of the user-object interactions, this paper firstly calculates the expected number of common neighbours of two objects with given popularities in random networks. A Balanced Common Neighbour similarity index ...
We propose two recommendation methods, based on the appropriate normalization of already existing si...
The most popular method collaborative filter approach is primarily used to handle the information ov...
User-based collaborative filtering approaches suggest interesting items to a user relying on similar...
Methods used in information filtering and recommendation often rely on quantifying the similarity be...
<p>We first calculate pairwise similarities between users via cosine similarity measure or Jaccard i...
Recommendation systems, based on collaborative filtering, offer a means of sifting through the enour...
Recommender systems learn from historical users’ feedback that is often non-uniformly distributed ac...
Recommender systems are designed to assist individual users to navigate through the rapidly growing ...
Neighbour-based collaborative filtering is a recommendation technique that provides meaningful and, ...
Abstract—Memory-based methods for recommending data services predict the ratings of active users bas...
<div><p>Personalized recommender systems have been receiving more and more attention in addressing t...
This paper addresses the problems of similarity calculation in the traditional recommendation algori...
Recently, personalized recommender systems have become indispensable in a wide variety of commercial...
Personalized recommender systems have been receiving more and more attention in addressing the serio...
A technique employed by recommendation systems is collaborative filtering, which predicts the item r...
We propose two recommendation methods, based on the appropriate normalization of already existing si...
The most popular method collaborative filter approach is primarily used to handle the information ov...
User-based collaborative filtering approaches suggest interesting items to a user relying on similar...
Methods used in information filtering and recommendation often rely on quantifying the similarity be...
<p>We first calculate pairwise similarities between users via cosine similarity measure or Jaccard i...
Recommendation systems, based on collaborative filtering, offer a means of sifting through the enour...
Recommender systems learn from historical users’ feedback that is often non-uniformly distributed ac...
Recommender systems are designed to assist individual users to navigate through the rapidly growing ...
Neighbour-based collaborative filtering is a recommendation technique that provides meaningful and, ...
Abstract—Memory-based methods for recommending data services predict the ratings of active users bas...
<div><p>Personalized recommender systems have been receiving more and more attention in addressing t...
This paper addresses the problems of similarity calculation in the traditional recommendation algori...
Recently, personalized recommender systems have become indispensable in a wide variety of commercial...
Personalized recommender systems have been receiving more and more attention in addressing the serio...
A technique employed by recommendation systems is collaborative filtering, which predicts the item r...
We propose two recommendation methods, based on the appropriate normalization of already existing si...
The most popular method collaborative filter approach is primarily used to handle the information ov...
User-based collaborative filtering approaches suggest interesting items to a user relying on similar...