Machine learning models are being used extensively in many high impact scenarios. Many of these models are ‘black boxes’, which are almost impossible to interpret. Successful implementations have been limited by this lack of interpretability. One approach to increasing interpretability is to use imitation learning to extract a more interpretable surrogate model from a black box model. Our aim is to evaluate Viper, an imitation learning algorithm, in terms of performance and interpretability. To achieve this, we evaluate surrogate decision tree models produced by Viper on three different environments and attempt to interpret these models. We find that Viper generally produces high performance interpretable decision trees, and that performanc...
As the complexity of machine learning (ML) models increases and the applications in different (and c...
Input-Output Agent Modelling (IOAM) is an approach to modelling an agent in terms of relationships b...
Abstract—Some data mining problems require predictivemodels to be not only accurate but also compreh...
Imitation learning algorithms, such as AggreVaTe, have proven successful in solving many challenging...
Machine learning models are increasingly being used in fields that have a direct impact on the lives...
The lack of transparent output behavior is a significant source of mistrust in many of the currently...
© 2018 Curran Associates Inc.All rights reserved. While deep reinforcement learning has successfully...
We look at a specific aspect of model interpretability: models often need to be constrained in size ...
Machine learning is an appealing and useful approach to creating vehicle control algorithms, both fo...
We report on a series of experiments in which all decision trees consistent with the training data a...
Recent severe failures of black box models in high stakes decisions have increased interest in inter...
Sequential decisions and predictions are common problems in natural language processing, robotics, a...
Recently it has been shown that many machine learning models are vulnerable to adversarial examples:...
Claims about the interpretability of decision trees can be traced back to the origins of machine lea...
An important objective of data mining is the development of predictive models. Based on a number of ...
As the complexity of machine learning (ML) models increases and the applications in different (and c...
Input-Output Agent Modelling (IOAM) is an approach to modelling an agent in terms of relationships b...
Abstract—Some data mining problems require predictivemodels to be not only accurate but also compreh...
Imitation learning algorithms, such as AggreVaTe, have proven successful in solving many challenging...
Machine learning models are increasingly being used in fields that have a direct impact on the lives...
The lack of transparent output behavior is a significant source of mistrust in many of the currently...
© 2018 Curran Associates Inc.All rights reserved. While deep reinforcement learning has successfully...
We look at a specific aspect of model interpretability: models often need to be constrained in size ...
Machine learning is an appealing and useful approach to creating vehicle control algorithms, both fo...
We report on a series of experiments in which all decision trees consistent with the training data a...
Recent severe failures of black box models in high stakes decisions have increased interest in inter...
Sequential decisions and predictions are common problems in natural language processing, robotics, a...
Recently it has been shown that many machine learning models are vulnerable to adversarial examples:...
Claims about the interpretability of decision trees can be traced back to the origins of machine lea...
An important objective of data mining is the development of predictive models. Based on a number of ...
As the complexity of machine learning (ML) models increases and the applications in different (and c...
Input-Output Agent Modelling (IOAM) is an approach to modelling an agent in terms of relationships b...
Abstract—Some data mining problems require predictivemodels to be not only accurate but also compreh...