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An Application of Multi-label Linear Discriminant Analysis and Binary Relevance K-Nearest Neighbor in Multi-label Classification of Annotated Images

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dc.contributor.author Malombe, M, F.
dc.contributor.author Mageto T
dc.contributor.author Muthama, V.
dc.date.accessioned 2022-06-30T05:07:31Z
dc.date.available 2022-06-30T05:07:31Z
dc.date.issued 2022-04
dc.identifier.uri http://repository.kyu.ac.ke/123456789/856
dc.description.abstract Although Binary Relevance (BR) is an adaptive and conceptually simple multi-label learning technique, its inability to exploit label dependencies and other inherent problems in multi-label examples makes it difficult to generalize well in the classification of real-world multi-label examples like annotated images. Thus, to strengthen the generalization ability of Binary Relevance, this study used Multi-label Linear Discriminant Analysis (MLDA) as a preprocessing technique to take care of the label dependencies, the curse of dimensionality, and label over counting inherent in multi-labeled images. After that, Binary Relevance with K Nearest Neighbor as the base learner was fitted and its classification performance was evaluated on randomly selected 1000 images with a label cardinality of 2.149 of the five most frequent categories, namely; "person", "chair", "bottle", "dining table" and "cup" in the Microsoft Common Objects in Context 2017 (MS COCO 2017) dataset. Experimental results showed that micro averages of precision, recall, and f1-score of Multi-label Linear Discriminant Analysis followed by Binary Relevance K Nearest Neighbor (MLDA-BRKNN) achieved a more than 30% improvement in classification of the 1000 annotated images in the dataset when compared with the micro averages of precision, recall, and f1- score of Binary Relevance K Nearest Neighbor (BRKNN), which was used as the reference classifier method in this study en_US
dc.language.iso en_US en_US
dc.publisher International Journal of Data Science and Analysis en_US
dc.subject Binary Relevance, K-Nearest Neighbor, Binary Relevance K-Nearest Neighbor (BRKNN), Multi-label Linear Discriminant Analysis (MLDA) en_US
dc.title An Application of Multi-label Linear Discriminant Analysis and Binary Relevance K-Nearest Neighbor in Multi-label Classification of Annotated Images en_US
dc.type Article en_US


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