In popular applications such as e-commerce sites and social media, users provide online reviews giving personal opinions about a wide array of items, such as products, services and people. These reviews are usually in the form of free text, and represent a rich source of information about the users’ preferences. Among the information elements that can be extracted from reviews, opinions about particular item aspects (i.e., characteristics, attributes or components) have been shown to be effective for user modeling and personalized recommendation. In this paper, we investigate the aspect-based recommendation problem by separately addressing three tasks, namely identifying references to item aspects in user reviews, classifying the s...
In recent years, online reviews have become the foremost medium for users to express their satisfac...
Online customers’ opinions represent a significant resource for both customers and enterprises to ex...
Recommender systems require interactions from users to infer personal preferences about new items. A...
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...
In recent years, increasingly large quantities of user reviews have been made available by several e...
24th International Conference, ICCBR 2016, Atlanta, Georgia, USA, 31 October - 02 November 2016E-com...
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 developments of e-commerce websites, user textual review has become an important source of ...
In this paper, we extend our previous work on social recommender systems to harness knowledge from p...
In recent years, recommender systems have become widely utilized by businesses across industries. Gi...
Aspect based opinion mining investigates deeply, the emotions related to one’s aspects. Aspects and ...
With the growing popularity of online shopping, most e-commerce websites nowadays offer their custom...
In recent years, online reviews have become the foremost medium for users to express their satisfac...
Online customers’ opinions represent a significant resource for both customers and enterprises to ex...
Recommender systems require interactions from users to infer personal preferences about new items. A...
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...
In recent years, increasingly large quantities of user reviews have been made available by several e...
24th International Conference, ICCBR 2016, Atlanta, Georgia, USA, 31 October - 02 November 2016E-com...
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 developments of e-commerce websites, user textual review has become an important source of ...
In this paper, we extend our previous work on social recommender systems to harness knowledge from p...
In recent years, recommender systems have become widely utilized by businesses across industries. Gi...
Aspect based opinion mining investigates deeply, the emotions related to one’s aspects. Aspects and ...
With the growing popularity of online shopping, most e-commerce websites nowadays offer their custom...
In recent years, online reviews have become the foremost medium for users to express their satisfac...
Online customers’ opinions represent a significant resource for both customers and enterprises to ex...
Recommender systems require interactions from users to infer personal preferences about new items. A...