1. FairBoost: Boosting supervised learning for learning on multiple sensitive featuresIvona Colakovic, Sašo Karakatič, 2023, izvirni znanstveni članek Opis: The vast majority of machine learning research focuses on improving the correctness of the outcomes (i.e., accuracy, error-rate, and other metrics). However, the negative impact of machine learning outcomes can be substantial if the consequences marginalize certain groups of data, especially if certain groups of people are the ones being discriminated against. Thus, recent papers try to tackle the unfair treatment of certain groups of data (humans), but mostly focus on only one sensitive feature with binary values. In this paper, we propose an ensemble boosting FairBoost that takes into consideration fairness as well as accuracy to mitigate unfairness in classification tasks during the model training process. This method tries to close the gap between proposed approaches and real-world applications, where there is often more than one sensitive feature that contains multiple categories. The proposed approach checks the bias and corrects it through the iteration of building the boosted ensemble. The proposed FairBoost is tested within the experimental setting and compared to similar existing algorithms. The results on different datasets and settings show no significant changes in the overall quality of classification, while the fairness of the outcomes is vastly improved. Ključne besede: fairness, boosting, machine learning, supervised learning Objavljeno v DKUM: 11.06.2024; Ogledov: 147; Prenosov: 23
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2. Adaptive boosting method for mitigating ethnicity and age group unfairnessIvona Colakovic, Sašo Karakatič, 2024, izvirni znanstveni članek Opis: Machine learning algorithms make decisions in various fields, thus influencing people’s lives. However, despite their good quality, they can be unfair to certain demographic groups, perpetuating socially induced biases. Therefore, this paper deals with a common unfairness problem, unequal quality of service, that appears in classification when age and ethnicity groups are used. To tackle this issue, we propose an adaptive boosting algorithm that aims to mitigate the existing unfairness in data. The proposed method is based on the AdaBoost algorithm but incorporates fairness in the calculation of the instance’s weight with the goal of making the prediction as good as possible for all ages and ethnicities. The results show that the proposed method increases the fairness of age and ethnicity groups while maintaining good overall quality compared to traditional classification algorithms. The proposed method achieves the best accuracy in almost every sensitive feature group. Based on the extensive analysis of the results, we found that when it comes to ethnicity, interestingly, White people are likely to be incorrectly classified as not being heroin users, whereas other groups are likely to be incorrectly classified as heroin users. Ključne besede: fairness, boosting, machine learning, classification Objavljeno v DKUM: 24.05.2024; Ogledov: 283; Prenosov: 18
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4. Improved Boosted Classification to Mitigate the Ethnicity and Age Group UnfairnessIvona Colakovic, Sašo Karakatič, 2022, objavljeni znanstveni prispevek na konferenci Opis: This paper deals with the group fairness issue that arises when classifying data, which contains socially induced biases for age and ethnicity. To tackle the unfair focus on certain age and ethnicity groups, we propose an adaptive boosting method that balances the fair treatment of all groups. The proposed approach builds upon the AdaBoost method but supplements it with the factor of fairness between the sensitive groups. The results show that the proposed method focuses more on the age and ethnicity groups, given less focus with traditional classification techniques. Thus the resulting classification model is more balanced, treating all of the sensitive groups more equally without sacrificing the overall quality of the classification. Ključne besede: fairness, classification, boosting, machine learning Objavljeno v DKUM: 02.08.2023; Ogledov: 530; Prenosov: 63
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5. Economic effects of renewable energy technologiesDario Maradin, Ljerka Cerović, Trina Mjeda, 2017, izvirni znanstveni članek Opis: Rapid economic development has resulted in the more frequent use of renewable energy technologies. On the other hand, the production and use of renewables fosters the development of new technologies, creating many new opportunities for entrepreneurial-minded individuals and, consequently, the economy in general. Renewable energy technologies have a multiplier effect in spurring the economy and the development of not only the energy sector but also all the supporting activities related to such industry. The purpose of this research is to analyse both the positive and the negative economic effects of investing in various renewable technologies, as well as to confirm, by means of the energy-economy model, the benefit of such technologies in boosting the economy. Ključne besede: renewable energy sources, new technologies, boosting the economy Objavljeno v DKUM: 13.11.2017; Ogledov: 1723; Prenosov: 519
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