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Top 7 ML Algorithms Used In Data Science Projects In 2022
Top 7 ML Algorithms Used In Data Science Projects In 2022

September 22, 2022

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Machine learning is a cutting-edge and important area in the sector. If you are a data science aspirant or a budding data scientist, you may have hoped to learn how to select a certain algorithm for your data science project. One of the revolution's primary key traits is the democratization of computer methods and tools.The outcomes are astonishing. Since so many ML algorithms are available, it can be difficult for data science students to choose the best one for their projects.

Here are the top ML algorithms you should know 

 

  • Linear regression

One of the most well-known and well-understood ML algorithms in statistics and machine learning is linear regression. Understanding linear regression does not require knowledge of statistics or linear algebra. It is the perfect algorithm for your data science assignment because of this.

 

  • Logistic Regression

A statistical analysis technique called logistic regression is used to forecast a data value based on previous observations. A logistic regression model predicts a dependent data variable by examining the association between one or more existing independent variables. In 2023, it will be among the top ML algorithms used by data scientists.

 

  • Decision Trees

A non-parametric supervised machine learning technique for classification and regression is called a decision tree (DT). The objective is to learn straightforward decision rules derived from the data features to build a model that predicts the value of a target variable. A piecewise constant approximation of a tree can be thought of. It is one of the most popular ML algorithms among data science students.

 

  • Artificial Neural Networks (ANN)

Artificial neural networks, more commonly referred to as "neural networks," are computer architectures that draw inspiration from the biological neural networks that make up animal brains. Artificial neurons, a set of interconnected units or nodes that loosely resemble the neurons in a biological brain, are the foundation of an ANN. Many students favor using this machine learning approach for their data science projects.

 

  • Random Forest

Professionals in data science utilize a random forest as a machine learning tool to address classification and regression issues. It makes use of ensemble learning, a method for solving complicated issues by combining a number of classifiers. In a random forest algorithm, there are many different decision trees.

 

  • Support-vector Machines (SVM)

Support vector machines in machine learning are supervised learning models with related machine learning algorithms that examine data for regression and classification analysis. When using the SVM technique, you can classify data by plotting the raw data as dots in an n-dimensional space (where n is the number of features you have). The data may then be easily classified because each feature's value is then connected to a specific coordinate. The data can be divided into groups and plotted on a graph using lines known as classifiers.

 

  • Dimensionality Reduction

Techniques for reducing the number of input variables in a dataset are called dimensionality reduction. The curse of dimensionality, more commonly known, describes how adding more input features makes it harder to model a predictive modeling problem. 

 

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