Many machine learning techniques remain ''black boxes'' because, despite their high predictive performance, it is difficult to understand the role of each variable involved in the prediction task. In this thesis, we will study three methods that explain individual predictions of any model and determine what explanatory variables are most influential for each particular observation, which brings transparency to machine learning algorithms. Additionally, we will test these methods on a simple dataset for which we can assess the quality of the explanations
Many machine learning algorithms are becoming a useful computational tool to find answers to support...
In recent years the use of complex machine learning has increased drastically. These complex black b...
In recent years the use of complex machine learning has increased drastically. These complex black b...
Many machine learning techniques remain ''black boxes'' because, despite their high predictive perfo...
This dissertation seeks to clarify and resolve a number of fundamental issues surrounding algorithmi...
Machine learning models are becoming more and more powerful and accurate, but their good predictions...
Machine learning models are becoming more and more powerful and accurate, but their good predictions...
Machine learning models are becoming more and more powerful and accurate, but their good predictions...
International audienceAs Machine Learning (ML) is now widely applied in many domains, in both resear...
Machine Learning (ML) is a rapidly growing field. There has been a surge of complex black-box models...
Machine Learning (ML) is a rapidly growing field. There has been a surge of complex black-box models...
Many high performance machine learning methods produce black box models, which do not disclose their...
International audienceThe use of black-box models for decisions affecting citizens is a hot topic of...
Neural networks are ubiquitous in applied machine learning for education. Their pervasive success in...
Neural networks are ubiquitous in applied machine learning for education. Their pervasive success in...
Many machine learning algorithms are becoming a useful computational tool to find answers to support...
In recent years the use of complex machine learning has increased drastically. These complex black b...
In recent years the use of complex machine learning has increased drastically. These complex black b...
Many machine learning techniques remain ''black boxes'' because, despite their high predictive perfo...
This dissertation seeks to clarify and resolve a number of fundamental issues surrounding algorithmi...
Machine learning models are becoming more and more powerful and accurate, but their good predictions...
Machine learning models are becoming more and more powerful and accurate, but their good predictions...
Machine learning models are becoming more and more powerful and accurate, but their good predictions...
International audienceAs Machine Learning (ML) is now widely applied in many domains, in both resear...
Machine Learning (ML) is a rapidly growing field. There has been a surge of complex black-box models...
Machine Learning (ML) is a rapidly growing field. There has been a surge of complex black-box models...
Many high performance machine learning methods produce black box models, which do not disclose their...
International audienceThe use of black-box models for decisions affecting citizens is a hot topic of...
Neural networks are ubiquitous in applied machine learning for education. Their pervasive success in...
Neural networks are ubiquitous in applied machine learning for education. Their pervasive success in...
Many machine learning algorithms are becoming a useful computational tool to find answers to support...
In recent years the use of complex machine learning has increased drastically. These complex black b...
In recent years the use of complex machine learning has increased drastically. These complex black b...