Several published results show that instance-based learning algorithms record high classification accuracies and low storage requirements when applied to supervised learning tasks. However, these learning algorithms are highly sensitive to training set noise. This paper describes a simple extension of instance-based learning algorithms for detecting and removing noisy instances from concept descriptions. The extension requires evidence that saved instances be significantly good classifiers before it allows them to be used for subsequent classification tasks. We show that this extension's performance degrades more slowly in the presence of noise, improves classification accuracies, and further reduces storage requirements in several artifici...
This work was supported by project PID2020-119478GB-I00 granted by Ministerio de Ciencia, Innovacion...
International audienceWhen training classifiers, presence of noise can severely harm theirperformanc...
In this paper we propose Instance Filtering as preprocessing step for supervised classification-base...
Several published results show that instance-based learning algorithms record high classification ac...
Storing and using specific instances improves the performance of several supervised learning algorit...
The goal of our research is to understand the power and appropriateness of instance-based representa...
The nearest neighbor algorithm and its derivatives are often quite successful at learning a concept ...
Abstract. Instance-based learning methods such as the nearest neigh-bor classifier have proven to pe...
Many learning algorithms form concept descriptions composed of clauses, each of which covers some pr...
AbstractThis paper presents average-case analyses of instance-based learning algorithms. The algorit...
One of the significant problems in classification is class noise which has numerous potential conseq...
The dependency on the quality of the training data has led to significant work in noise reduction fo...
Compression measures used in inductive learners, such as measures based on the minimum description l...
Abstract. Real-world data is never perfect and can often suffer from corruptions (noise) that may im...
Abstract. We describe a novel framework for class noise mitigation that assigns a vector of class me...
This work was supported by project PID2020-119478GB-I00 granted by Ministerio de Ciencia, Innovacion...
International audienceWhen training classifiers, presence of noise can severely harm theirperformanc...
In this paper we propose Instance Filtering as preprocessing step for supervised classification-base...
Several published results show that instance-based learning algorithms record high classification ac...
Storing and using specific instances improves the performance of several supervised learning algorit...
The goal of our research is to understand the power and appropriateness of instance-based representa...
The nearest neighbor algorithm and its derivatives are often quite successful at learning a concept ...
Abstract. Instance-based learning methods such as the nearest neigh-bor classifier have proven to pe...
Many learning algorithms form concept descriptions composed of clauses, each of which covers some pr...
AbstractThis paper presents average-case analyses of instance-based learning algorithms. The algorit...
One of the significant problems in classification is class noise which has numerous potential conseq...
The dependency on the quality of the training data has led to significant work in noise reduction fo...
Compression measures used in inductive learners, such as measures based on the minimum description l...
Abstract. Real-world data is never perfect and can often suffer from corruptions (noise) that may im...
Abstract. We describe a novel framework for class noise mitigation that assigns a vector of class me...
This work was supported by project PID2020-119478GB-I00 granted by Ministerio de Ciencia, Innovacion...
International audienceWhen training classifiers, presence of noise can severely harm theirperformanc...
In this paper we propose Instance Filtering as preprocessing step for supervised classification-base...