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  1. A selective sampling approach to active feature selection.Huan Liu, Hiroshi Motoda & Lei Yu - 2004 - Artificial Intelligence 159 (1-2):49-74.
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  • Consistency-based search in feature selection.Manoranjan Dash & Huan Liu - 2003 - Artificial Intelligence 151 (1-2):155-176.
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  • The usage of Margin-based feature selection algorithm in ivf icsi/et data analysis.Robert Milewski, Paweł Malinowski, Anna Justyna Milewska, Piotr Ziniewicz & Sławomir Wołczyński - 2010 - Studies in Logic, Grammar and Rhetoric 21 (34).
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  • Predicting Young Imposter Syndrome Using Ensemble Learning.Md Nafiul Alam Khan, M. Saef Ullah Miah, Md Shahjalal, Talha Bin Sarwar & Md Shahariar Rokon - 2022 - Complexity 2022:1-10.
    Background. Imposter syndrome, associated with self-doubt and fear despite clear accomplishments and competencies, is frequently detected in medical students and has a negative impact on their well-being. This study aimed to predict the students’ IS using the machine learning ensemble approach. Methods. This study was a cross-sectional design among medical students in Bangladesh. Data were collected from February to July 2020 through snowball sampling technique across medical colleges in Bangladesh. In this study, we employed three different machine learning techniques such (...)
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  • Selection of relevant features and examples in machine learning.Avrim L. Blum & Pat Langley - 1997 - Artificial Intelligence 97 (1-2):245-271.
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  • Feature Subset Selection by Bayesian network-based optimization.I. Inza, P. Larrañaga, R. Etxeberria & B. Sierra - 2000 - Artificial Intelligence 123 (1-2):157-184.
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  • Legal requirements on explainability in machine learning.Adrien Bibal, Michael Lognoul, Alexandre de Streel & Benoît Frénay - 2020 - Artificial Intelligence and Law 29 (2):149-169.
    Deep learning and other black-box models are becoming more and more popular today. Despite their high performance, they may not be accepted ethically or legally because of their lack of explainability. This paper presents the increasing number of legal requirements on machine learning model interpretability and explainability in the context of private and public decision making. It then explains how those legal requirements can be implemented into machine-learning models and concludes with a call for more inter-disciplinary research on explainability.
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  • Machine Learning Based Classification of Resting-State fMRI Features Exemplified by Metabolic State.Arkan Al-Zubaidi, Alfred Mertins, Marcus Heldmann, Kamila Jauch-Chara & Thomas F. Münte - 2019 - Frontiers in Human Neuroscience 13.
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  • ASlib: A benchmark library for algorithm selection.Bernd Bischl, Pascal Kerschke, Lars Kotthoff, Marius Lindauer, Yuri Malitsky, Alexandre Fréchette, Holger Hoos, Frank Hutter, Kevin Leyton-Brown, Kevin Tierney & Joaquin Vanschoren - 2016 - Artificial Intelligence 237 (C):41-58.
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  • An Incremental Approach to Contribution-Based Feature Selection.Sheng-Uei Guan, Jun Liu & Yinan Qi - 2004 - Journal of Intelligent Systems 13 (1):15-42.
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  • Predictive Feature Generation and Selection Using Process Data From PISA Interactive Problem-Solving Items: An Application of Random Forests.Zhuangzhuang Han, Qiwei He & Matthias von Davier - 2019 - Frontiers in Psychology 10.
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  • Positive approximation: An accelerator for attribute reduction in rough set theory.Yuhua Qian, Jiye Liang, Witold Pedrycz & Chuangyin Dang - 2010 - Artificial Intelligence 174 (9-10):597-618.
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  • Artificial Immune System–Negative Selection Classification Algorithm (NSCA) for Four Class Electroencephalogram (EEG) Signals.Nasir Rashid, Javaid Iqbal, Fahad Mahmood, Anam Abid, Umar S. Khan & Mohsin I. Tiwana - 2018 - Frontiers in Human Neuroscience 12:424534.
    Artificial Immune Systems (AIS) are intelligent algorithms derived on the principles inspired by human immune system. In this research work, electroencephalography (EEG) signals for four distinct motor movement of human limbs are detected and classified using Negative Selection Classification Algorithm (NSCA). For this study, a widely studied open source EEG signal database (BCI IV - Graz dataset 2a, comprising 9 subjects) has been used. Mel Frequency Cepstral Coefficients (MFCCs) are extracted as selected feature from recorded EEG signals. Dimensionality reduction of (...)
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  • Good Things for Those Who Wait: Predictive Modeling Highlights Importance of Delay Discounting for Income Attainment.William H. Hampton, Nima Asadi & Ingrid R. Olson - 2018 - Frontiers in Psychology 9:359023.
    Income is a primary determinant of social mobility, career progression, and personal happiness. It has been shown to vary with demographic variables like age and education, with more oblique variables such as height, and with behaviors such as delay discounting, i.e., the propensity to devalue future rewards. However, the relative contribution of each these salary-linked variables to income is not known. Further, much of past research has often been underpowered, drawn from populations of convenience, and produced findings that have not (...)
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  • MRI Texture-Based Recognition of Dystrophy Phase in Golden Retriever Muscular Dystrophy Dogs. Elimination of Features that Evolve along with the Individual’s Growth.Dorota Duda - 2018 - Studies in Logic, Grammar and Rhetoric 56 (1):121-142.
    The study investigates the possibility of applying texture analysis (TA) for testing Duchenne Muscular Dystrophy (DMD) therapies. The work is based on the Golden Retriever Muscular Dystrophy (GRMD) canine model, in which 3 phases of canine growth and/or dystrophy development are identified: the first phase (0–4 months of age), the second phase (from over 4 to 6 months), and the third phase (from over 6 months to death). Two differentiation problems are posed: (i) the first phase vs. the second phase (...)
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