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  1. Logistic regression may be used for classification.

    In order to preserve the convex nature for the loss function, a log-loss cost function has been designed for logistic regression. This cost function extremes at labels True and False.

    The gradient for the loss function of logistic regression comes out to have the same form of terms as the gradient for the Least Squared Error.

    More: baeldung.com/cs/gradient-desce

    #optimization #algebra #linearAlgebra #math #maths #mathematics #mathStodon #ML #dataScience #machineLearning #DeepLearning #neuralNetworks #NLP #modeling #modelling #models #dataDev #AIDev #regression #modelling #dataLearning #probabilities #logisticRegression #logLoss #sigmoid #classification #differentialCalculus #loss

  2. Logistic regression may be used for classification.

    In order to preserve the convex nature for the loss function, a log-loss cost function has been designed for logistic regression. This cost function extremes at labels True and False.

    The gradient for the loss function of logistic regression comes out to have the same form of terms as the gradient for the Least Squared Error.

    More: baeldung.com/cs/gradient-desce

    #optimization #algebra #linearAlgebra #math #maths #mathematics #mathStodon #ML #dataScience #machineLearning #DeepLearning #neuralNetworks #NLP #modeling #modelling #models #dataDev #AIDev #regression #modelling #dataLearning #probabilities #logisticRegression #logLoss #sigmoid #classification #differentialCalculus #loss

  3. Logistic regression may be used for classification.

    In order to preserve the convex nature for the loss function, a log-loss cost function has been designed for logistic regression. This cost function extremes at labels True and False.

    The gradient for the loss function of logistic regression comes out to have the same form of terms as the gradient for the Least Squared Error.

    More: baeldung.com/cs/gradient-desce

  4. Logistic regression may be used for classification.

    In order to preserve the convex nature for the loss function, a log-loss cost function has been designed for logistic regression. This cost function extremes at labels True and False.

    The gradient for the loss function of logistic regression comes out to have the same form of terms as the gradient for the Least Squared Error.

    More: baeldung.com/cs/gradient-desce

    #optimization #algebra #linearAlgebra #math #maths #mathematics #mathStodon #ML #dataScience #machineLearning #DeepLearning #neuralNetworks #NLP #modeling #modelling #models #dataDev #AIDev #regression #modelling #dataLearning #probabilities #logisticRegression #logLoss #sigmoid #classification #differentialCalculus #loss

  5. Logistic regression may be used for classification.

    In order to preserve the convex nature for the loss function, a log-loss cost function has been designed for logistic regression. This cost function extremes at labels True and False.

    The gradient for the loss function of logistic regression comes out to have the same form of terms as the gradient for the Least Squared Error.

    More: baeldung.com/cs/gradient-desce

    #optimization #algebra #linearAlgebra #math #maths #mathematics #mathStodon #ML #dataScience #machineLearning #DeepLearning #neuralNetworks #NLP #modeling #modelling #models #dataDev #AIDev #regression #modelling #dataLearning #probabilities #logisticRegression #logLoss #sigmoid #classification #differentialCalculus #loss

  6. @data @datadon 🧵

    How to assess a statistical model?
    How to choose between variables?

    Pearson's #correlation is irrelevant if you suspect that the relationship is not a straight line.

    If monotonic relationship:
    "#Spearman’s rho is particularly useful for small samples where weak correlations are expected, as it can detect subtle monotonic trends." It is "widespread across disciplines where the measurement precision is not guaranteed".
    "#Kendall’s Tau-b is less affected [than Spearman’s rho] by outliers in the data, making it a robust option for datasets with extreme values."
    Ref: statisticseasily.com/kendall-t

    #normality #normalDistribution #modeling #dataDev #AIDev #ML #modelEvaluation #regression #modelling #dataLearning #featureEngineering #linearRegression #modeling #probability #probabilities #statistics #stats #correctionRatio #ML #Pearson #bias #regressionRedress #distributions

  7. @data @datadon 🧵

    How to assess a statistical model?
    How to choose between variables?

    Pearson's #correlation is irrelevant if you suspect that the relationship is not a straight line.

    If monotonic relationship:
    "#Spearman’s rho is particularly useful for small samples where weak correlations are expected, as it can detect subtle monotonic trends." It is "widespread across disciplines where the measurement precision is not guaranteed".
    "#Kendall’s Tau-b is less affected [than Spearman’s rho] by outliers in the data, making it a robust option for datasets with extreme values."
    Ref: statisticseasily.com/kendall-t

    #normality #normalDistribution #modeling #dataDev #AIDev #ML #modelEvaluation #regression #modelling #dataLearning #featureEngineering #linearRegression #modeling #probability #probabilities #statistics #stats #correctionRatio #ML #Pearson #bias #regressionRedress #distributions

  8. @[email protected] @[email protected] 🧵

    How to assess a statistical model?
    How to choose between variables?

    Pearson's is irrelevant if you suspect that the relationship is not a straight line.

    If monotonic relationship:
    "’s rho is particularly useful for small samples where weak correlations are expected, as it can detect subtle monotonic trends." It is "widespread across disciplines where the measurement precision is not guaranteed".
    "’s Tau-b is less affected [than Spearman’s rho] by outliers in the data, making it a robust option for datasets with extreme values."
    Ref: statisticseasily.com/kendall-t

  9. @data @datadon 🧵

    How to assess a statistical model?
    How to choose between variables?

    Pearson's #correlation is irrelevant if you suspect that the relationship is not a straight line.

    If monotonic relationship:
    "#Spearman’s rho is particularly useful for small samples where weak correlations are expected, as it can detect subtle monotonic trends." It is "widespread across disciplines where the measurement precision is not guaranteed".
    "#Kendall’s Tau-b is less affected [than Spearman’s rho] by outliers in the data, making it a robust option for datasets with extreme values."
    Ref: statisticseasily.com/kendall-t

    #normality #normalDistribution #modeling #dataDev #AIDev #ML #modelEvaluation #regression #modelling #dataLearning #featureEngineering #linearRegression #modeling #probability #probabilities #statistics #stats #correctionRatio #ML #Pearson #bias #regressionRedress #distributions

  10. @data @datadon 🧵

    How to assess a statistical model?
    How to choose between variables?

    Pearson's #correlation is irrelevant if you suspect that the relationship is not a straight line.

    If monotonic relationship:
    "#Spearman’s rho is particularly useful for small samples where weak correlations are expected, as it can detect subtle monotonic trends." It is "widespread across disciplines where the measurement precision is not guaranteed".
    "#Kendall’s Tau-b is less affected [than Spearman’s rho] by outliers in the data, making it a robust option for datasets with extreme values."
    Ref: statisticseasily.com/kendall-t

    #normality #normalDistribution #modeling #dataDev #AIDev #ML #modelEvaluation #regression #modelling #dataLearning #featureEngineering #linearRegression #modeling #probability #probabilities #statistics #stats #correctionRatio #ML #Pearson #bias #regressionRedress #distributions