The lack of interpretability remains a barrier to adopting deep neural networks across many safety-critical domains. Tree regularization was recently proposed to encourage a deep neural network's decisions to resemble those of a globally compact, axis-aligned decision tree. However, it is often unreasonable to expect a single tree to predict well across all possible inputs. In practice, doing so could lead to neither interpretable nor performant optima. To address this issue, we propose regional tree regularization – a method that encourages a deep model to be well-approximated by several separate decision trees specific to predefined regions of the input space. Across many datasets, including two healthcare applications, we show our approa...
Despite superior performance in many situations, deep neural networks are often vulnerable to advers...
Due to the nonlinear but highly interpretable representations,decision tree (DT) models have signifi...
Despite powerful representation ability, deep neural networks (DNNs) are prone to over-fitting, beca...
The lack of interpretability remains a barrier to adopting deep neural networks across many safety-c...
The lack of interpretability remains a key barrier to the adoption of deep models in many applicatio...
One obstacle that so far prevents the introduction of machine learning models primarily in critical ...
There have been many recent advances in machine learning, resulting in models which have had major i...
Numerous approaches address over-fitting in neural networks: by imposing a penalty on the parameters...
Unsupervised neural networks, such as restricted Boltzmann machines (RBMs) and deep belief networks ...
In classification and forecasting with tabular data, one often utilizes tree-based models. Those can...
In this work we present Neural Decision Forests, a novel approach to jointly tackle data representat...
Interpreting deep neural networks is of great importance to understand and verify deep models for na...
We present Deep Neural Decision Forests - a novel approach that unifies classification trees with th...
Deep Neural Networks have long been considered black box systems, where their interpretability is a ...
Decision trees (DT) are considered to be one of the oldest machine learning models which received a ...
Despite superior performance in many situations, deep neural networks are often vulnerable to advers...
Due to the nonlinear but highly interpretable representations,decision tree (DT) models have signifi...
Despite powerful representation ability, deep neural networks (DNNs) are prone to over-fitting, beca...
The lack of interpretability remains a barrier to adopting deep neural networks across many safety-c...
The lack of interpretability remains a key barrier to the adoption of deep models in many applicatio...
One obstacle that so far prevents the introduction of machine learning models primarily in critical ...
There have been many recent advances in machine learning, resulting in models which have had major i...
Numerous approaches address over-fitting in neural networks: by imposing a penalty on the parameters...
Unsupervised neural networks, such as restricted Boltzmann machines (RBMs) and deep belief networks ...
In classification and forecasting with tabular data, one often utilizes tree-based models. Those can...
In this work we present Neural Decision Forests, a novel approach to jointly tackle data representat...
Interpreting deep neural networks is of great importance to understand and verify deep models for na...
We present Deep Neural Decision Forests - a novel approach that unifies classification trees with th...
Deep Neural Networks have long been considered black box systems, where their interpretability is a ...
Decision trees (DT) are considered to be one of the oldest machine learning models which received a ...
Despite superior performance in many situations, deep neural networks are often vulnerable to advers...
Due to the nonlinear but highly interpretable representations,decision tree (DT) models have signifi...
Despite powerful representation ability, deep neural networks (DNNs) are prone to over-fitting, beca...