Proceedings Article10.1109/ICMLA.2017.0-147
Multilabel Classification with Weighted Labels Using Learning Classifier Systems
Shabnam Nazmi,Mohammad Razeghi-Jahromi,Abdollah Homaifar +2 more
- 01 Dec 2017
- pp 275-280
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TL;DR: The Michigan style strength-based learning classifier system, which is a rule-based supervised learning algorithm, is extended to handle multi-label classification tasks and results show the ability of the model in learning multi-class and multi- label data with low confidence estimation error.
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Abstract: In this work the Michigan style strength-based learning classifier system, which is a rule-based supervised learning algorithm, is extended to handle multi-label classification tasks. Moreover, it is assumed that the class membership for training data is partially known and the uncertainty is represented by confidence values that reflects the probability of each label being true. Necessary parameters are introduced, and learning classifiers are modified to learn simultaneously the confidence level and multi-label in the training data. Additionally, to quantify the classifier performance, a novel loss measure is introduced that generalizes the well-known Hamming loss criteria to takes into account the classification error and confidence estimation error simultaneously. The algorithm is tested on one real-world data and two synthetic data sets. Results show the ability of the model in learning multi-class and multi-label data with low confidence estimation error.
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Citations
A bi-phased multi-objective genetic algorithm based classifier
TL;DR: This paper has compared performance of BPMOGA based classifier with fourteen GA and non-GA based classifiers and Statistical test shows that the performance of the proposed classifier is either superior or comparable to other classifiers.
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Evolving multi-label classification rules by exploiting high-order label correlations
TL;DR: In this article, the label powerset (LP) strategy is employed and a prediction aggregation is utilized that improves the prediction capability of the LP method in the presence of unseen labelsets.
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•Posted Content
Evolving Multi-label Classification Rules by Exploiting High-order Label Correlation
TL;DR: This paper aims at exploiting the high-order label correlations locally using supervised learning classifier systems (UCS) using the label powerset (LP) strategy and a prediction aggregation is utilized that improves the prediction capability of the LP method in the presence of unseen labelsets.
15
Multi-label Classification Using Genetic-Based Machine Learning
Shabnam Nazmi,Xuyang Yan,Abdollah Homaifar +2 more
- 01 Oct 2018
TL;DR: A multi-label rule-based evolutionary learner is proposed, which is called MLRBC (Multi-Label Rule-Based Classifier), taking advantage of the strong generalization capability of UCS and its robustness in handling data sets with imbalanced classes.
9
Possibility Rule-Based Classification Using Function Approximation
Shabnam Nazmi,Abdollah Homaifar +1 more
- 01 Oct 2018
TL;DR: The experimental study with synthetic data reveals the ability of the proposed method to make efficient use of available information in the possibilistic labels of training data compared to conventional classification methods.
1
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•Posted Content
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TL;DR: The task of multi-label classification is introduced, the sparse related literature is organizes into a structured presentation and comparative experimental results of certain multilabel classification methods are performed.
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