Feb. 6, 2024, 5:43 a.m. | Daisuke Takahashi Shohei Shimizu Takuma Tanaka

cs.LG updates on arXiv.org arxiv.org

Explainable artificial intelligence (XAI) has helped elucidate the internal mechanisms of machine learning algorithms, bolstering their reliability by demonstrating the basis of their predictions. Several XAI models consider causal relationships to explain models by examining the input-output relationships of prediction models and the dependencies between features. The majority of these models have been based their explanations on counterfactual probabilities, assuming that the causal graph is known. However, this assumption complicates the application of such models to real data, given that …

algorithms applications artificial artificial intelligence box counterfactual credit cs.lg dependencies discovery explainable artificial intelligence input-output intelligence machine machine learning machine learning algorithms machine learning models prediction prediction models predictions relationships reliability xai

Founding AI Engineer, Agents

@ Occam AI | New York

AI Engineer Intern, Agents

@ Occam AI | US

AI Research Scientist

@ Vara | Berlin, Germany and Remote

Data Architect

@ University of Texas at Austin | Austin, TX

Data ETL Engineer

@ University of Texas at Austin | Austin, TX

Machine Learning Research Scientist

@ d-Matrix | San Diego, Ca