Javascript must be enabled to continue!
Biasing Rule-Based Explanations Towards User Preferences
View through CrossRef
With the growing prevalence of Explainable AI (XAI), the effectiveness, transparency, usefulness, and trustworthiness of explanations have come into focus. However, recent work in XAI often still falls short in terms of integrating human knowledge and preferences into the explanatory process. In this paper, we aim to bridge this gap by proposing a novel method, which personalizes rule-based explanations to the needs of different users based on their expertise and background knowledge, formalized as a set of weighting functions over a knowledge graph. While we assume that user preferences are provided as a weighting function, our focus is on generating explanations tailored to the user’s background knowledge. The method transforms rule-based interpretable models into personalized explanations considering user preferences in terms of the granularity of knowledge. Evaluating our approach on multiple datasets demonstrates that the generated explanations are highly aligned with simulated user preferences compared to non-personalized explanations.
Title: Biasing Rule-Based Explanations Towards User Preferences
Description:
With the growing prevalence of Explainable AI (XAI), the effectiveness, transparency, usefulness, and trustworthiness of explanations have come into focus.
However, recent work in XAI often still falls short in terms of integrating human knowledge and preferences into the explanatory process.
In this paper, we aim to bridge this gap by proposing a novel method, which personalizes rule-based explanations to the needs of different users based on their expertise and background knowledge, formalized as a set of weighting functions over a knowledge graph.
While we assume that user preferences are provided as a weighting function, our focus is on generating explanations tailored to the user’s background knowledge.
The method transforms rule-based interpretable models into personalized explanations considering user preferences in terms of the granularity of knowledge.
Evaluating our approach on multiple datasets demonstrates that the generated explanations are highly aligned with simulated user preferences compared to non-personalized explanations.
Related Results
An International Rule of Law
An International Rule of Law
The “international rule of law” is an elusive concept. Under this heading, mainly two variations are being discussed: The international rule of law “proper” and an “internationaliz...
Multivariate Mate Choice Constrains Mate Preference Evolution
Multivariate Mate Choice Constrains Mate Preference Evolution
Mate preferences are ideals or standards believed to guide our mate choices, which are crucial to an individual’s inclusive fitness. In evolutionary psychology, many specific mate ...
Eliciting Single-Peaked Preferences Using Comparison Queries
Eliciting Single-Peaked Preferences Using Comparison Queries
Voting is a general method for aggregating the preferences of multiple agents. Each agent ranks all the possible alternatives, and based on this, an aggregate ranking of the alter...
Counterfactual Models for Fair and Adequate Explanations
Counterfactual Models for Fair and Adequate Explanations
Recent efforts have uncovered various methods for providing explanations that can help interpret the behavior of machine learning programs. Exact explanations with a rigorous logic...
Explanation in history and social science
Explanation in history and social science
Historians and social scientists explain at least two sorts of things: (a) those individual human actions that have historical or social significance, such as Stalin’s decision to ...
Autonomy on Trial
Autonomy on Trial
Photo by CHUTTERSNAP on Unsplash
Abstract
This paper critically examines how US bioethics and health law conceptualize patient autonomy, contrasting the rights-based, individualist...
Diversifying Furniture Recommendations: A User-Profile-Enhanced Recommender VAE Approach
Diversifying Furniture Recommendations: A User-Profile-Enhanced Recommender VAE Approach
We propose a novel recommendation model for diversifying furniture recommendations and aligning them more closely with user preferences. Our model builds upon the Recommender Varia...
Fair Allocation of Network Resources for Internet Users
Fair Allocation of Network Resources for Internet Users
In a commercial Internet, the traffic behavior is determined by the contracts between the ISPs and the users, where a user can be a dial-up user, or one corporate network or a grou...

