Conference
Rough Sets and Knowledge Technology
About: Rough Sets and Knowledge Technology is an academic conference. The conference publishes majorly in the area(s): Rough set & Dominance-based rough set approach. Over the lifetime, 810 publications have been published by the conference receiving 8268 citations.
Papers
24 Oct 2014
TL;DR: A novel feature pooling method is proposed to regularize CNNs, which replaces the deterministic pooling operations with a stochastic procedure by randomly using the conventional max pooling and average pooling methods.
Abstract: Convolutional Neural Network (CNN) is a biologically inspired trainable architecture that can learn invariant features for a number of applications. In general, CNNs consist of alternating convolutional layers, non-linearity layers and feature pooling layers. In this work, a novel feature pooling method, named as mixed pooling, is proposed to regularize CNNs, which replaces the deterministic pooling operations with a stochastic procedure by randomly using the conventional max pooling and average pooling methods. The advantage of the proposed mixed pooling method lies in its wonderful ability to address the over-fitting problem encountered by CNN generation. Experimental results on three benchmark image classification datasets demonstrate that the proposed mixed pooling method is superior to max pooling, average pooling and some other state-of-the-art works known in the literature.
493 citations
14 May 2007
TL;DR: It is shown that the decision-theoretic models need to consider additional issues in probabilistic rough set models.
Abstract: Decision-theoretic rough set models are a probabilistic extension of the algebraic rough set model. The required parameters for defining probabilistic lower and upper approximations are calculated based on more familiar notions of costs (risks) through the well-known Bayesian decision procedure. We review and revisit the decision-theoretic models and present new results. It is shown that we need to consider additional issues in probabilistic rough set models.
483 citations
1 Jul 2009
TL;DR: A new interpretation of rules in rough set theory is introduced, which enables us to derive three types of decision rules, namely, positive rules for acceptance, boundary rules for indecision or delayed decision, and negative rules for rejection.
Abstract: A new interpretation of rules in rough set theory is introduced According to the positive, boundary, and negative regions of a set, one can make a three-way decision: accept, abstain and reject The three regions enable us to derive three types of decision rules, namely, positive rules for acceptance, boundary rules for indecision or delayed decision, and negative rules for rejection Within the decision-theoretic rough set model, the associated costs of rules are analyzed
431 citations
11 Oct 2013
TL;DR: Real-world decision making typically involves the three options of acceptance, rejection and non-commitment, and multiple levels of granularity lead naturally to sequential three-way decisions.
Abstract: Real-world decision making typically involves the three options of acceptance, rejection and non-commitment. Three-way decisions can be motivated, interpreted and implemented based on the notion of information granularity. With coarse-grained granules, it may only be possible to make a definite decision of acceptance or rejection for some objects. A lack of detailed information may make a definite decision impossible for some other objects, and hence the third non-commitment option is used. Objects with a non-commitment decision may be further investigated by using fine-grained granules. In this way, multiple levels of granularity lead naturally to sequential three-way decisions.
166 citations
24 Oct 2014
TL;DR: A novel concept formation and novel concept lattices are developed with respect to a binary information table to support three-way decisions to provide a new kind of model to make three- way decisions.
Abstract: In this paper, a novel concept formation and novel concept lattices are developed with respect to a binary information table to support three-way decisions. The three-way operators and their inverse are defined and their properties are given. Based on these operators, two types of three-way concepts are defined and the corresponding three-way concept lattices are constructed. Three-way concept lattices provide a new kind of model to make three-way decisions.
151 citations
Performance Metrics
| Year | Papers |
|---|---|
| 2015 | 46 |
| 2014 | 85 |
| 2013 | 47 |
| 2012 | 68 |
| 2011 | 93 |
| 2010 | 99 |