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How many algorithms are required in machine learning?

How many algorithms are required in machine learning?

There are four types of machine learning algorithms: supervised, semi-supervised, unsupervised and reinforcement.

Can neural networks be used for logistic regression?

Basically, we can think of logistic regression as a one layer neural network. In fact, it is very common to use logistic sigmoid functions as activation functions in the hidden layer of a neural network – like the schematic above but without the threshold function.

How is the neural network algorithm similar to logistic regression How are they different?

Compared to logistic regression, neural network models are more flexible, and thus more susceptible to overfitting. Network size can be restricted by decreasing the number of variables and hidden neurons, and by pruning the network after training.

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What are different algorithm techniques in machine learning?

Broadly, there are 3 types of Machine Learning Algorithms Examples of Supervised Learning: Regression, Decision Tree, Random Forest, KNN, Logistic Regression etc.

Is it possible to design a logistic regression algorithm using a neural network algorithm?

3) True-False: Is it possible to design a logistic regression algorithm using a Neural Network Algorithm? True, Neural network is a is a universal approximator so it can implement linear regression algorithm.

Is logistic regression a machine learning?

Logistic regression is another technique borrowed by machine learning from the field of statistics. It is the go-to method for binary classification problems (problems with two class values).

Is logistic regression always machine learning?

Logistic regression (and more generally, GLM) does NOT belong to Machine Learning! Rather, these methods belongs to parametric modeling. Both parametric and algorithmic (ML) models use the data, but in different ways.

What is a regression model in machine learning?

Regression analysis consists of a set of machine learning methods that allow us to predict a continuous outcome variable (y) based on the value of one or multiple predictor variables (x). Briefly, the goal of regression model is to build a mathematical equation that defines y as a function of the x variables.

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Are machine learning algorithms deterministic?

Some machine learning algorithms are deterministic. Just like the programming that you’re used to. That means, when the algorithm is given the same dataset, it learns the same model every time. An example is a linear regression or logistic regression algorithm. Some algorithms are not deterministic; instead, they are stochastic.

What is logistic regression in machine learning?

Logistic Regression in Machine Learning Logistic regression is one of the most popular Machine Learning algorithms, which comes under the Supervised Learning technique. It is used for predicting the categorical dependent variable using a given set of independent variables.

What is the target variable in machine learning?

During training, y is also called the target variable in machine learning, or the dependent variable in statistical modeling. It represents the categorical value that we are trying to predict. 1/ (1+e ^- z) is the sigmoid function. wo + w1x is the linear model within logistic regression.

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Why do my machine learning models give different results?

The machine learning models may be different each time they are trained. In turn, the models may make different predictions, and when evaluated, may have a different level of error or accuracy. There are at least four cases where you will get different results; they are: Different results because of differences in training data.