%0 Journal Article %T Over-sampling imbalanced datasets using the Covariance Matrix %A IreimisLeguendeVarona %A JosCarlosHernndezNieto %A JulioMadera %A YoanMartnezLpez %J EDUL %D 2020 %R 10.4108/eai.13-7-2018.163982 %X INTRODUCTION: Nowadays, many machine learning tasks involve learning from imbalanced datasets, leading to the miss-classification of the minority class. One of the state-of-the-art approaches to ĦħsolveĦħ this problem at the data level is Synthetic Minority Over-sampling Technique (SMOTE) which in turn uses KNearest Neighbors (KNN) algorithm to select and generate new instances. OBJECTIVES: This paper presents SMOTE-Cov, a modified SMOTE that use Covariance Matrix instead of KNN to balance datasets, with continuous attributes and binary class. METHODS: We implemented two variants SMOTE-CovI, which generates new values within the interval of each attribute and SMOTE-CovO, which allows some values to be outside the interval of the attributes. RESULTS: The results show that our approach has a similar performance as the state- of-the-art approaches. CONCLUSION: In this paper, a new algorithm is proposed to generate synthetic instances of the minority class, using the Covariance Matrix %K Imbalanced datasets %K Oversampling %K Covariance Matrix %K Attribute Dependency %U https://eudl.eu/doi/10.4108/eai.13-7-2018.163982