In this paper, we extend our previous work on social recommender systems to harness knowledge from product reviews. By mining product reviews, we can exploit sentiment-rich content to ascertain user opinion expressed over product aspects. Aspect aware sentiment analysis provides a more structured approach to product comparison. However, aspects extracted using NLP-based techniques remain too large and lead to poor quality product comparison metrics. To overcome this problem, we explore the utility of feature selection heuristics based on frequency counts and Information Gain (IG) to rank and select the most useful aspects. Here an interesting contribution is the use of top ranked products from Amazon to formulate a binary classification ove...
Social recommender systems capitalise on product reviews to generate recommendations that are both g...
In this paper we present a methodology to justify the suggestions generated by a recommendation algo...
With the rapid growth of user-generated content on the internet, sentiment analysis of online review...
Social recommender systems harness knowledge from social content, experiences and interactions to pr...
Purpose - Recommender system approaches such as collaborative and content-based filtering rely on us...
Purpose: Recommender system approaches such as collaborative and content-based filtering rely on use...
Numerous client reports of products at the moment are available on the internet. Purchaser studies c...
Social recommender systems capitalise on product reviews to generate recommendations that are both g...
The focus of this paper was on Amazon product reviews. The goal of this is to study is two (NLP) for...
Nowadays, more and more products are sold online. Under popular products, there are normally hundred...
Online customers’ opinions represent a significant resource for both customers and enterprises to ex...
Today lots of consumer reviews about products are present on the Internet. Consumer reviews reflect ...
This paper proposes an aspect ranking framework which automatically finds out the most useful aspect...
The Internet has become an excellent source for gathering consumer?s opinions or reviews. For produc...
One major piece of information available on the web is reviews about various products that are writt...
Social recommender systems capitalise on product reviews to generate recommendations that are both g...
In this paper we present a methodology to justify the suggestions generated by a recommendation algo...
With the rapid growth of user-generated content on the internet, sentiment analysis of online review...
Social recommender systems harness knowledge from social content, experiences and interactions to pr...
Purpose - Recommender system approaches such as collaborative and content-based filtering rely on us...
Purpose: Recommender system approaches such as collaborative and content-based filtering rely on use...
Numerous client reports of products at the moment are available on the internet. Purchaser studies c...
Social recommender systems capitalise on product reviews to generate recommendations that are both g...
The focus of this paper was on Amazon product reviews. The goal of this is to study is two (NLP) for...
Nowadays, more and more products are sold online. Under popular products, there are normally hundred...
Online customers’ opinions represent a significant resource for both customers and enterprises to ex...
Today lots of consumer reviews about products are present on the Internet. Consumer reviews reflect ...
This paper proposes an aspect ranking framework which automatically finds out the most useful aspect...
The Internet has become an excellent source for gathering consumer?s opinions or reviews. For produc...
One major piece of information available on the web is reviews about various products that are writt...
Social recommender systems capitalise on product reviews to generate recommendations that are both g...
In this paper we present a methodology to justify the suggestions generated by a recommendation algo...
With the rapid growth of user-generated content on the internet, sentiment analysis of online review...