The reliability of an induced classifier can be affected by several factors including the data oriented factors and the algorithm oriented factors. In some cases, the reliability could also be affected by knowledge oriented factors. In this paper, we analyze three special cases to examine the reliability of the discovered knowledge. Our case study results show that (1) in the cases of mining from low quality data, rough classification approach is more reliable than exact approach which in general tolerate to low quality data; (2) Without sufficient large size of the data, the reliability of the discovered knowledge will be decreased accordingly; (3) The reliability of point learning approach could easily be misled by noisy data. It will in ...
A variety of measures exist to assess the accuracy of predictive models in data mining and several a...
The goal of defining an applicability domain for a predictive classification model is to identify th...
Empirical research in learning algorithms for classification tasks generally requires the use of sig...
The reliability of an induced classifier can be affected by several factors including the data orien...
In this thesis we take upon different approaches for estimating reliability of individual classifica...
Multi-classlearningrequiresaclassifiertodiscriminateamongalargeset of L classes in order to define a...
The thesis discuses reliability estimation of individual predictions in the supervised learning fram...
We address the problem of applying machine-learning classifiers in domains where incorrect classific...
Pattern classification techniques derived from statistical principles have been widely studied and h...
The field of machine learning has made a lot of progress in the recent years. As it is used more fre...
In computational linguistics, a reliability measurement of 0.8 on some statistic such as $\kappa$ is...
Classes of real world datasets have various properties (such as imbalance, size, complexity, and cla...
A novel method for evaluating the reliability of a classifier on a pattern is proposed based on the ...
Fault diagnostics problems can be formulated as classification tasks. Due to limited data and to unc...
In data mining it is usually desirable that discovered knowledge have some characteristics such as b...
A variety of measures exist to assess the accuracy of predictive models in data mining and several a...
The goal of defining an applicability domain for a predictive classification model is to identify th...
Empirical research in learning algorithms for classification tasks generally requires the use of sig...
The reliability of an induced classifier can be affected by several factors including the data orien...
In this thesis we take upon different approaches for estimating reliability of individual classifica...
Multi-classlearningrequiresaclassifiertodiscriminateamongalargeset of L classes in order to define a...
The thesis discuses reliability estimation of individual predictions in the supervised learning fram...
We address the problem of applying machine-learning classifiers in domains where incorrect classific...
Pattern classification techniques derived from statistical principles have been widely studied and h...
The field of machine learning has made a lot of progress in the recent years. As it is used more fre...
In computational linguistics, a reliability measurement of 0.8 on some statistic such as $\kappa$ is...
Classes of real world datasets have various properties (such as imbalance, size, complexity, and cla...
A novel method for evaluating the reliability of a classifier on a pattern is proposed based on the ...
Fault diagnostics problems can be formulated as classification tasks. Due to limited data and to unc...
In data mining it is usually desirable that discovered knowledge have some characteristics such as b...
A variety of measures exist to assess the accuracy of predictive models in data mining and several a...
The goal of defining an applicability domain for a predictive classification model is to identify th...
Empirical research in learning algorithms for classification tasks generally requires the use of sig...