We present a new multi-objective optimization approach for synthesizing interpretations that 'explain' the behavior of black-box machine learning models. Constructing human-understandable interpretations for black-box models often requires balancing conflicting objectives. A simple interpretation may be easier to understand for humans while being less precise in its predictions vis-a-vis a complex interpretation. Existing methods for synthesizing interpretations use a single objective function and are often optimized for a single class of interpretations. In contrast, we provide a more general and multi-objective synthesis framework that allows users to choose (1) the class of syntactic templates from which an interpretation should be synth...
We introduce and discuss a knowledge-driven distillation approach to explaining black-box models by ...
We introduce and discuss a knowledge-driven distillation approach to explaining black-box models by ...
Many machine learning techniques remain ''black boxes'' because, despite their high predictive perfo...
We present a new multi-objective optimization approach for synthesizing interpretations that “expla...
This electronic version was submitted by the student author. The certified thesis is available in th...
The need to understand the inner workings of opaque Machine Learning models has prompted researchers...
The need to understand the inner workings of opaque Machine Learning models has prompted researchers...
This dissertation seeks to clarify and resolve a number of fundamental issues surrounding algorithmi...
By their nature, the composition of black box models is opaque. This makes the ability to generate e...
Machine learning enables computers to learn from data and fuels artificial intelligence systems with...
As machine learning algorithms are increasingly applied to high impact yet high risk tasks, such as ...
Jin Y, Sendhoff B, Körner E. Simultaneous Generation of Accurate and Interpretable Neural Network Cl...
High-stakes applications require AI-generated models to be interpretable. Current algorithms for the...
We introduce and discuss a knowledge-driven distillation approach to explaining black-box models by ...
One approach for interpreting black-box machine learning models is to find a global approximation of...
We introduce and discuss a knowledge-driven distillation approach to explaining black-box models by ...
We introduce and discuss a knowledge-driven distillation approach to explaining black-box models by ...
Many machine learning techniques remain ''black boxes'' because, despite their high predictive perfo...
We present a new multi-objective optimization approach for synthesizing interpretations that “expla...
This electronic version was submitted by the student author. The certified thesis is available in th...
The need to understand the inner workings of opaque Machine Learning models has prompted researchers...
The need to understand the inner workings of opaque Machine Learning models has prompted researchers...
This dissertation seeks to clarify and resolve a number of fundamental issues surrounding algorithmi...
By their nature, the composition of black box models is opaque. This makes the ability to generate e...
Machine learning enables computers to learn from data and fuels artificial intelligence systems with...
As machine learning algorithms are increasingly applied to high impact yet high risk tasks, such as ...
Jin Y, Sendhoff B, Körner E. Simultaneous Generation of Accurate and Interpretable Neural Network Cl...
High-stakes applications require AI-generated models to be interpretable. Current algorithms for the...
We introduce and discuss a knowledge-driven distillation approach to explaining black-box models by ...
One approach for interpreting black-box machine learning models is to find a global approximation of...
We introduce and discuss a knowledge-driven distillation approach to explaining black-box models by ...
We introduce and discuss a knowledge-driven distillation approach to explaining black-box models by ...
Many machine learning techniques remain ''black boxes'' because, despite their high predictive perfo...