Interpreting Shared Deep Learning Models via Explicable Boundary Trees

09/12/2017
by   Huijun Wu, et al.
0

Despite outperforming the human in many tasks, deep neural network models are also criticized for the lack of transparency and interpretability in decision making. The opaqueness results in uncertainty and low confidence when deploying such a model in model sharing scenarios, when the model is developed by a third party. For a supervised machine learning model, sharing training process including training data provides an effective way to gain trust and to better understand model predictions. However, it is not always possible to share all training data due to privacy and policy constraints. In this paper, we propose a method to disclose a small set of training data that is just sufficient for users to get the insight of a complicated model. The method constructs a boundary tree using selected training data and the tree is able to approximate the complicated model with high fidelity. We show that traversing data points in the tree gives users significantly better understanding of the model and paves the way for trustworthy model sharing.

READ FULL TEXT

page 5

page 6

page 7

research
11/19/2021

Understanding Training-Data Leakage from Gradients in Neural Networks for Image Classification

Federated learning of deep learning models for supervised tasks, e.g. im...
research
07/05/2021

Improving a neural network model by explanation-guided training for glioma classification based on MRI data

In recent years, artificial intelligence (AI) systems have come to the f...
research
01/27/2020

Structural Information Learning Machinery: Learning from Observing, Associating, Optimizing, Decoding, and Abstracting

In the present paper, we propose the model of structural information le...
research
09/16/2020

Analysis of Generalizability of Deep Neural Networks Based on the Complexity of Decision Boundary

For supervised learning models, the analysis of generalization ability (...
research
08/26/2021

Machine Unlearning of Features and Labels

Removing information from a machine learning model is a non-trivial task...
research
07/21/2020

Fair and autonomous sharing of federate learning models in mobile Internet of Things

Federate learning can conduct machine learning as well as protect the pr...
research
12/11/2020

Data Appraisal Without Data Sharing

One of the most effective approaches to improving the performance of a m...

Please sign up or login with your details

Forgot password? Click here to reset