Abstract—This paper studies a problem of robust rule-based classification, i.e., making predictions in the presence of missing values in data. This study differs from other missing value handling research in that it does not handle missing values but builds a rule-based classification model to tolerate missing values. Based on a commonly used rule-based classification model, we characterize the robustness of a hierarchy of rule sets as k-optimal rule sets with the decreasing size corresponding to the decreasing robustness. We build classifiers based on k-optimal rule sets and show experimentally that they are more robust than some benchmark rule-based classifiers, such as C4.5rules and CBA. We also show that the proposed approach is better ...
Abstract- In real world raw data is highly affected by Missing value and uncertainty. This missing a...
Missing values arise in most real-world data sets due to the aggregation of multiple sources and int...
D.Phil. (Electrical and Electronic Engineering)The ubiquitous missing data and its pervasiveness in ...
This paper studies a problem of robust rule-based classification, i.e. making predictions in the pre...
In this paper, we review possible strategies for handling missing values in separate-and-conquer rul...
[Abstract]: Rules are a type of human-understandable knowledge, and rule-based methods are very popu...
Summary. The paper presents an approach to and technique for direct mining of binary data with missi...
AbstractNaive Bayes classifiers provide an efficient and scalable approach to supervised classificat...
Presented herein is a novel algorithm for inference on decision forest models that increases the rob...
[[abstract]]The problem of recovering missing values from a dataset has become an important research...
Abstract. Rules are a type of human-understandable knowledge, and rule-based methods are very popula...
Abstract: Problem statement: Predicting the value for missing attributes is an important data prepro...
In many application settings, the data have missing entries which make analysis challenging. An abun...
Discovering hidden knowledge from hug amount of data in form of association rules mining havebecome ...
Abstract. In this paper we present a new approach to handling in-complete information and classifier...
Abstract- In real world raw data is highly affected by Missing value and uncertainty. This missing a...
Missing values arise in most real-world data sets due to the aggregation of multiple sources and int...
D.Phil. (Electrical and Electronic Engineering)The ubiquitous missing data and its pervasiveness in ...
This paper studies a problem of robust rule-based classification, i.e. making predictions in the pre...
In this paper, we review possible strategies for handling missing values in separate-and-conquer rul...
[Abstract]: Rules are a type of human-understandable knowledge, and rule-based methods are very popu...
Summary. The paper presents an approach to and technique for direct mining of binary data with missi...
AbstractNaive Bayes classifiers provide an efficient and scalable approach to supervised classificat...
Presented herein is a novel algorithm for inference on decision forest models that increases the rob...
[[abstract]]The problem of recovering missing values from a dataset has become an important research...
Abstract. Rules are a type of human-understandable knowledge, and rule-based methods are very popula...
Abstract: Problem statement: Predicting the value for missing attributes is an important data prepro...
In many application settings, the data have missing entries which make analysis challenging. An abun...
Discovering hidden knowledge from hug amount of data in form of association rules mining havebecome ...
Abstract. In this paper we present a new approach to handling in-complete information and classifier...
Abstract- In real world raw data is highly affected by Missing value and uncertainty. This missing a...
Missing values arise in most real-world data sets due to the aggregation of multiple sources and int...
D.Phil. (Electrical and Electronic Engineering)The ubiquitous missing data and its pervasiveness in ...