How many features is too many for logistic regression?
Table of Contents
- 1 How many features is too many for logistic regression?
- 2 Why can’t logistic regression use more than 2 classes?
- 3 Is feature selection necessary for logistic regression?
- 4 Can logistic regression have multiple features?
- 5 Why feature scaling is necessary in the context of linear regression?
- 6 How do you fit data in logistic regression?
How many features is too many for logistic regression?
It’s not some rule that specifies how many features you are permitted to use. The Rule of 10 is descriptive, not prescriptive, and it’s an approximate guideline: if the number of instances is much fewer than 10 times the number of features, you’re at especially high risk of overfitting, and you might get poor results.
Why can’t logistic regression use more than 2 classes?
The fit model predicts the probability that an example belongs to class 1. By default, logistic regression cannot be used for classification tasks that have more than two class labels, so-called multi-class classification. Instead, it requires modification to support multi-class classification problems.
Is logistic regression data scale necessary?
Summary. We need to perform Feature Scaling when we are dealing with Gradient Descent Based algorithms (Linear and Logistic Regression, Neural Network) and Distance-based algorithms (KNN, K-means, SVM) as these are very sensitive to the range of the data points.
Which method is used to best fit the data in logistic regression?
Just as ordinary least square regression is the method used to estimate coefficients for the best fit line in linear regression, logistic regression uses maximum likelihood estimation (MLE) to obtain the model coefficients that relate predictors to the target.
Is feature selection necessary for logistic regression?
It is not necessary to do the feature selection. On the other and, if you do feature selection, in most cases, the performance (classification accuracy) will be worse.
Can logistic regression have multiple features?
Unlike linear regression which outputs continuous number values, logistic regression uses the logistic sigmoid function to transform its output to return a probability value which can then be mapped to two or more discrete classes.
Is it possible to apply logistic regression algorithm on a class classification problem 3?
Yes, we can apply logistic regression on 3 classification problem, We can use One Vs all method for 3 class classification in logistic regression.
Is logistic regression affected by standardizing the features?
Standardization isn’t required for logistic regression. The main goal of standardizing features is to help convergence of the technique used for optimization. For example, if you use Newton-Raphson to maximize the likelihood, standardizing the features makes the convergence faster.
Why feature scaling is necessary in the context of linear regression?
What about regression? In regression, it is often recommended to scale the features so that the predictors have a mean of 0. This makes it easier to interpret the intercept term as the expected value of Y when the predictor values are set to their means.
How do you fit data in logistic regression?
Once we have a model (the logistic regression model) we need to fit it to a set of data in order to estimate the parameters β0 and β1. In a linear regression we mentioned that the straight line fitting the data can be obtained by minimizing the distance between each dot of a plot and the regression line.