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Two Statistical Approaches to Justify the Use of the Logistic Function in Binary Logistic Regression

Abdelhamid Zaïdi, Asamh Saleh M. Al Luhayb

2023Mathematical Problems in Engineering76 citationsDOIOpen Access PDF

Abstract

Logistic regression is a commonly used classification algorithm in machine learning. It allows categorizing data into discrete classes by learning the relationship from a given set of labeled data. It learns a linear relationship from the given dataset and then introduces nonlinearity through an activation function to determine a hyperplane that separates the learning points into two subclasses. In the case of logistic regression, the logistic function is the most used activation function to perform binary classification. The choice of logistic function for binary classifications is justified by its ability to transform any real number into a probability between 0 and 1. This study provides, through two different approaches, a rigorous statistical answer to the crucial question that torments us, namely where does this logistic function on which most neural network algorithms are based come from? Moreover, it determines the computational cost of logistic regression, using theoretical and experimental approaches.

Topics & Concepts

Logistic regressionLogistic functionLogistic distributionLogistic model treeFunction (biology)LogitBinary classificationHyperplaneBinary numberArtificial intelligenceMultinomial logistic regressionSet (abstract data type)Machine learningComputer scienceMathematicsStatisticsSupport vector machineCombinatoricsArithmeticProgramming languageBiologyEvolutionary biologyNeural Networks and ApplicationsAdvanced Statistical Methods and ModelsFault Detection and Control Systems
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