More and more aspects of our everyday lives are influenced by automated decisions made by systems that statistically analyze traces of our activities. It is thus natural to question whether such systems are trustworthy, particularly given the opaqueness and complexity of their internal workings. In this paper, we present our ongoing work towards a framework that aims to increase trust in machine-generated recommendations by combining ideas from three separate recent research directions, namely explainability, fairness and user interactive visualization. The goal is to enable different stakeholders, with potentially varying levels of background and diverse needs, to query, understand, and fix sources of distrust.Peer reviewe
A critical aspect of any recommendation process is explaining the reasoning behind each recommendati...
Our increasing reliance on complex algorithms for recommendations calls for models and methods for e...
Explainability, interpretability and how much they affect human trust in AI systems are ultimately p...
More and more aspects of our everyday lives are influenced by automated decisions made by systems th...
Recommender systems, especially those built on machine learning, are increasing in popularity, as we...
Automated decision systems are increasingly used for consequential decision making---for a variety o...
As one of the most pervasive applications of machine learning, recommender systems are playing an im...
As AI systems become ever more intertwined in our personallives, the way in which they explain thems...
We increasingly depend on a variety of data-driven algorithmic systems to assist us in many aspects ...
Recently, there has been extensive interest in developing intelligent human-centered AI (artificial ...
A recommender system's ability to establish trust with users and convince them of its recommendation...
Fairness-aware recommendation eliminates discrimination issues to build trustworthy recommendation s...
Review-based recommender systems (RS) have shown great potential in helping users manage information...
We increasingly depend on a variety of data-driven algorithmic systems to assist us in many aspects ...
The rise of digital libraries and the pertinent problem of information overload have contributed to ...
A critical aspect of any recommendation process is explaining the reasoning behind each recommendati...
Our increasing reliance on complex algorithms for recommendations calls for models and methods for e...
Explainability, interpretability and how much they affect human trust in AI systems are ultimately p...
More and more aspects of our everyday lives are influenced by automated decisions made by systems th...
Recommender systems, especially those built on machine learning, are increasing in popularity, as we...
Automated decision systems are increasingly used for consequential decision making---for a variety o...
As one of the most pervasive applications of machine learning, recommender systems are playing an im...
As AI systems become ever more intertwined in our personallives, the way in which they explain thems...
We increasingly depend on a variety of data-driven algorithmic systems to assist us in many aspects ...
Recently, there has been extensive interest in developing intelligent human-centered AI (artificial ...
A recommender system's ability to establish trust with users and convince them of its recommendation...
Fairness-aware recommendation eliminates discrimination issues to build trustworthy recommendation s...
Review-based recommender systems (RS) have shown great potential in helping users manage information...
We increasingly depend on a variety of data-driven algorithmic systems to assist us in many aspects ...
The rise of digital libraries and the pertinent problem of information overload have contributed to ...
A critical aspect of any recommendation process is explaining the reasoning behind each recommendati...
Our increasing reliance on complex algorithms for recommendations calls for models and methods for e...
Explainability, interpretability and how much they affect human trust in AI systems are ultimately p...