A recommender system's ability to establish trust with users and convince them of its recommendations, such as which camera or PC to purchase, is a crucial design factor especially for e-commerce environments. This observation led us to build a trust model for recommender agents with a focus on the agent's trustworthiness as derived from the user's perception of its competence and especially its ability to explain the recommended results. We present in this article new results of our work in developing design principles and algorithms for constructing explanation interfaces. We show the effectiveness of these principles via a significant-scale user study in which we compared an interface developed based on these principles with a traditiona...
Anthropomorphic agents used in online-shopping need to be trusted by users so that users feel comfor...
Trust is an important component of human-AI relationships and plays a major role in shaping the reli...
Online product recommendation agents (RAs) utilize rational and social appeals to enhance their pers...
Recommender systems are considered as useful software that helps users in screening and evaluating p...
Due to advances in Web-based technologies, ample opportunities exist to utilize knowledge-based sys...
Ecommerce has grown phenomenally in the recent years and trust is believed to be an antecedent befor...
This paper aims to provide an integrative review of the experiment-based literature on the anteceden...
Abstract. We present a preliminary study the aim of which is to provide a high level model for the e...
Trust is a main success factor for automated recommendation agents on e-commerce sites. Various aspe...
Business-to-Consumer (B2C) e-commerce is expected to grow up at aggressive rates in future years. S...
Recommender systems, especially those built on machine learning, are increasing in popularity, as we...
As online stores are offering an almost unlimited shelf space, users must increasingly rely on produ...
Recommender Systems (RS) have emerged as an important response to the so-called information overload...
More and more aspects of our everyday lives are influenced by automated decisions made by systems th...
An online recommendation agent (RA) provides users assistance by eliciting from users their product ...
Anthropomorphic agents used in online-shopping need to be trusted by users so that users feel comfor...
Trust is an important component of human-AI relationships and plays a major role in shaping the reli...
Online product recommendation agents (RAs) utilize rational and social appeals to enhance their pers...
Recommender systems are considered as useful software that helps users in screening and evaluating p...
Due to advances in Web-based technologies, ample opportunities exist to utilize knowledge-based sys...
Ecommerce has grown phenomenally in the recent years and trust is believed to be an antecedent befor...
This paper aims to provide an integrative review of the experiment-based literature on the anteceden...
Abstract. We present a preliminary study the aim of which is to provide a high level model for the e...
Trust is a main success factor for automated recommendation agents on e-commerce sites. Various aspe...
Business-to-Consumer (B2C) e-commerce is expected to grow up at aggressive rates in future years. S...
Recommender systems, especially those built on machine learning, are increasing in popularity, as we...
As online stores are offering an almost unlimited shelf space, users must increasingly rely on produ...
Recommender Systems (RS) have emerged as an important response to the so-called information overload...
More and more aspects of our everyday lives are influenced by automated decisions made by systems th...
An online recommendation agent (RA) provides users assistance by eliciting from users their product ...
Anthropomorphic agents used in online-shopping need to be trusted by users so that users feel comfor...
Trust is an important component of human-AI relationships and plays a major role in shaping the reli...
Online product recommendation agents (RAs) utilize rational and social appeals to enhance their pers...