The importance of attribute vector ambiguity has been largely overlooked by the machine learning community. A pattern recognition problem can be solved in many ways within the scope of machine learning. Neural Networks, Decision Tree Algorithms such as C4.5, Bayesian Classifiers, and Instance Based Learning are the main algorithms. All listed solutions fail to address ambiguity in the attribute vector. The research reported shows, ignoring this ambiguity leads to problems of classifier scalability and issues with instance collection and aggregation. The Algorithm presented accounts for both ambiguity of the attribute vector and class label thus solving both issues of scalability and instance collection. The research also shows that when app...
We present 20 new multi-labeled artificial datasets, which can also be used for evaluating ambiguity...
ce In this paper we try to characterize a set of classification problems. For this, we use the disag...
Abstract Most data complexity studies have focused on characterizing the complexity of the entire da...
Machine learning usually assumes that attribute values, as well as class labels, are either known pr...
Machine learning has an important role in many computer vision applications, including object detect...
This Open access is brought to you for free and open access by the Electronic Theses and Dissertatio...
Abstract. Inducing a classification function from a set of examples in the form of labeled instances...
In this paper, we study a special kind of learning problem in which each training instance is given ...
Abstract. So-called classifier chains have recently been proposed as an appealing method for tacklin...
We study the effect of imperfect training data labels on the performance of classification methods. ...
State-of-the-art deep learning methods achieve human-like performance on many tasks, but make errors...
Multiple-instance learning (MIL) is a generalization of supervised learning that attempts to learn u...
Learning Classifier Systems (LCS) have not been widely applied to image recognition tasks due to the...
State-of-the-art deep learning methods achieve human-like performance on many tasks, but make errors...
z · ce In this paper we try to characterize a set of classification problems. For this, we use the d...
We present 20 new multi-labeled artificial datasets, which can also be used for evaluating ambiguity...
ce In this paper we try to characterize a set of classification problems. For this, we use the disag...
Abstract Most data complexity studies have focused on characterizing the complexity of the entire da...
Machine learning usually assumes that attribute values, as well as class labels, are either known pr...
Machine learning has an important role in many computer vision applications, including object detect...
This Open access is brought to you for free and open access by the Electronic Theses and Dissertatio...
Abstract. Inducing a classification function from a set of examples in the form of labeled instances...
In this paper, we study a special kind of learning problem in which each training instance is given ...
Abstract. So-called classifier chains have recently been proposed as an appealing method for tacklin...
We study the effect of imperfect training data labels on the performance of classification methods. ...
State-of-the-art deep learning methods achieve human-like performance on many tasks, but make errors...
Multiple-instance learning (MIL) is a generalization of supervised learning that attempts to learn u...
Learning Classifier Systems (LCS) have not been widely applied to image recognition tasks due to the...
State-of-the-art deep learning methods achieve human-like performance on many tasks, but make errors...
z · ce In this paper we try to characterize a set of classification problems. For this, we use the d...
We present 20 new multi-labeled artificial datasets, which can also be used for evaluating ambiguity...
ce In this paper we try to characterize a set of classification problems. For this, we use the disag...
Abstract Most data complexity studies have focused on characterizing the complexity of the entire da...