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  1.  25
    The Use of Principal Component Analysis and Logistic Regression in Prediction of Infertility Treatment Outcome.Anna Justyna Milewska, Dorota Jankowska, Dorota Citko, Teresa Więsak, Brian Acacio & Robert Milewski - 2014 - Studies in Logic, Grammar and Rhetoric 39 (1):7-23.
    Principal Component Analysis is one of the data mining methods that can be used to analyze multidimensional datasets. The main objective of this method is a reduction of the number of studied variables with the mainte- nance of as much information as possible, uncovering the structure of the data, its visualization as well as classification of the objects within the space defined by the newly created components. PCA is very often used as a preliminary step in data preparation through the (...)
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    The Application of Multinomial Logistic Regression Models for the Assessment of Parameters of Oocytes and Embryos Quality in Predicting Pregnancy and Miscarriage.Anna Justyna Milewska, Dorota Jankowska, Teresa Więsak, Brian Acacio & Robert Milewski - 2017 - Studies in Logic, Grammar and Rhetoric 51 (1):7-18.
    Infertility is a huge problem nowadays, not only from the medical but also from the social point of view. A key step to improve treatment outcomes is the possibility of effective prediction of treatment result. In a situation when a phenomenon with more than 2 states needs to be explained, e.g. pregnancy, miscarriage, non-pregnancy, the use of multinomial logistic regression is a good solution. The aim of this paper is to select those features that have a significant impact on achieving (...)
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