A comparative study of feature weighting methods for document co-clustering

Author(s):  
Yunming Ye ◽  
Xutao Li ◽  
Biao Wu ◽  
Yan Li
Author(s):  
Eoin M. Kenny ◽  
Mark T. Keane

In this paper, twin-systems are described to address the eXplainable artificial intelligence (XAI) problem, where a black box model is mapped to a white box “twin” that is more interpretable, with both systems using the same dataset. The framework is instantiated by twinning an artificial neural network (ANN; black box) with a case-based reasoning system (CBR; white box), and mapping the feature weights from the former to the latter to find cases that explain the ANN’s outputs. Using a novel evaluation method, the effectiveness of this twin-system approach is demonstrated by showing that nearest neighbor cases can be found to match the ANN predictions for benchmark datasets. Several feature-weighting methods are competitively tested in two experiments, including our novel, contributions-based method (called COLE) that is found to perform best. The tests consider the ”twinning” of traditional multilayer perceptron (MLP) networks and convolutional neural networks (CNN) with CBR systems. For the CNNs trained on image data, qualitative evidence shows that cases provide plausible explanations for the CNN’s classifications.


2019 ◽  
Vol 8 (2S3) ◽  
pp. 1145-1150

In today’s VLSI technology nodes, interconnect delay plays an important part in deciding the performance of the chip designs. Various methods are introduced at the level of placement and routing to address this problem. To address this problem at the level of global routing, net weighting methods are being explored in the industry and academia. We investigate four methods for weighting the critical nets during performance driven global routing. This paper presents a comparative study conducted on the four methods for net weighting proposed by us in our previous works


Sign in / Sign up

Export Citation Format

Share Document