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Titlebook: Empirical Approach to Machine Learning; Plamen P. Angelov,Xiaowei Gu Book 2019 Springer Nature Switzerland AG 2019 Empirical Data Analytic

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https://doi.org/10.1007/978-3-030-02384-3Empirical Data Analytics; Data-centered Approaches; Deep Learning Applications; Fuzzy Rule-based Classi
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https://doi.org/10.1007/978-981-4585-05-7ry and related subjects were established. Nowadays, vast and exponentially increasing data sets and streams which are often non-linear, non-stationary and increasingly more multi-modal/heterogeneous (combining various physical variables, signals with images/videos as well as text) are being generate
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Belonging/Unbelonging to the Nation of FRB systems are also covered and their differences are analyzed. The design of FRB systems is also covered. This chapter further moves on to the ANNs, which include the feedforward neural networks and three types of deep learning models. Both of the FRB systems and the ANNs have been proven univ
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Olaf Zimmermann,Mark Tomlinson,Stefan Peuser presented, and two approaches for identifying . FRB systems, namely, the subjective one, which is based on human expertise, and the objective one, which is based on the autonomous data partitioning algorithm, are also presented. The traditional fuzzy sets and systems suffer from the so-called “curs
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