Home Uncategorized Key Machine Learning Algorithms Explained | 3.0TV
Uncategorized

Key Machine Learning Algorithms Explained | 3.0TV

Share
Share

By Vishakha Thakur

Machine learning, a process through which machines can learn and make predictions based on the provided data is one of the subsets of Artificial Intelligence.

Data is a crucial aspect in Machine learning as the response of the machine completely depends upon the data you feed it up with.

In one of our previous blogs, we shared all about machine learning and its types.

In this blog, our sole focus will remain mainly on key algorithms of machine learning.

●     Linear regression

●     Logistic regression

●     Naive Bayes

●     Decision tree

●     Random forest

●     Gradient boosting

●     Support vector machine

Linear Regression

Linear regression is a supervised machine learning technique used to predict variables within a range, such as house prices. It is a statistical approach used to construct a linear relationship between an input variable X and an output variable Y.

Linear regression uses data points with known input and output values to identify the line that best matches those specific points. This line, often known as the “regression line,” represents a prediction model. Using this line, we can estimate or anticipate the output value Y based on an input value X.

Linear regression is primarily used for predictive modelling rather than classification.

Logistic Regression

Logistic regression, also known as ‘logit regression,’ is again a supervised learning technique being used for binary classification tasks. This type of algorithm mainly identifies whether an input belongs to a particular class or another.

Logistic regression determines whether an input can be classified into a single primary class. However, it is widely used to categorise outputs into two types: primary and non-primary classes. To accomplish this, logistic regression defines a threshold or boundary for binary categorization. 

As a result, logistic regression is more commonly employed for binary categorization than predictive modelling. It allows us to classify incoming data based on the probability estimate and a predefined threshold. This makes logistic regression an effective tool for tasks like picture recognition, spam email detection, and medical diagnosis, which require categorising data into discrete classes.

Decision Tree

A decision tree is a supervised learning method used for categorization and predictive modelling. It resembles a flowchart, with a root node asking a specific query about the data. Based on the response, the data is routed along various branches to successive internal nodes, which pose additional questions and direct the data to subsequent branches.

Decision tree algorithms are widely used in machine learning because they can handle complex datasets with ease and simplicity. The algorithm’s structure simplifies understanding and comprehending the decision-making process. Decision trees allow us to classify or predict outcomes based on data features by asking questions and following the corresponding branches.

Decision trees are useful for a variety of machine learning applications due to their simplicity and interpretability, particularly when working with complicated datasets.

Random Forest

A random forest algorithm is a collection of decision trees used in classification and predictive modelling. Instead of depending on a single decision tree, a random forest aggregates predictions from numerous decision trees to get more accurate results.

In a random forest, a large number of decision tree algorithms (often hundreds or even thousands) are trained on diverse random samples from the training dataset. This sample procedure is known as “bagging.” Each decision tree is trained independently using its own random sample.

Once trained, the random forest sends the same data to all decision trees. Each tree makes a prediction, and the random forest totals the outcomes. The most common prediction from all decision trees is then chosen as the dataset’s final prediction.

Random forests solve a common “overfitting” problem with individual decision trees.

Support Vector Machine

A support vector machine is mainly used in classification as well as predictive modelling. SVM algorithms are dependably good in performance with little amounts of data. SVM algorithms work by establishing a decision boundary known as a “hyperplane.” This hyperplane functions as a line in two-dimensional space, separating two sets of labelled data.

SVM seeks the best possible decision boundary by increasing the margin between the two labelled data sets. It looks for the largest gap or spacing between the classes. Any new data point on either side of the decision boundary is classified using the labels from the training dataset.

It’s worth noting that hyperplanes can take on many shapes when displayed in three dimensions, allowing SVM to handle more complicated patterns and correlations in the data.

Gradient Boosting

Gradient boosting techniques use the ensemble method, which means they generate a succession of “weak” models that are iteratively refined to produce a strong prediction model. The iterative method eventually eliminates model errors, resulting in an ideal and accurate final model.

The algorithm begins with a simple, naive model that may make fundamental assumptions, such as categorising data depending on whether it is above or below the mean.

In each iteration, the algorithm creates a new model with the goal of fixing earlier models’ faults. It identifies patterns or linkages that earlier models failed to capture and combines them into the new model.

Gradient boosting is useful in dealing with complicated problems and vast datasets. It can detect subtle patterns and connections that a single model could overlook. Gradient boosting creates a strong predictive model by combining predictions from numerous models.

Share
Written by
Srinivasan Chari -

A distinguished author, researcher, and thought leader, Dr. Srinivasan Gopal Chari stands as a formidable intellectual force, seamlessly interweaving academic rigor with the art of storytelling. His work, an intricate tapestry of research and literature, transcends conventional boundaries, exploring profound themes that challenge, inspire, and provoke critical thought. With an insatiable quest for justice, cultural exploration, and human resilience, Dr. Chari's literary contributions delve into the very fabric of societal complexities.

Combining meticulous research with a deep understanding of human resilience, Dr. Chari aims to contribute to academic and policy discourses that promote global peace and social justice. He has been a relentless weaver of narratives that unravel society’s darkest knots wielding his pen like a scalpel to dissect injustices, ignite discourse, and etch pathways to equity.

In a world drowning in noise, his words stand as sentinels of truth, stitching together the fractured fabric of our collective conscience. A mind honed the crucibles of Mass Communication, Journalism, Advertising, and Public Relations—and further tempered by a dual-specialisation MBA in Marketing and Financial Management—Dr. Chari’s educational odyssey is testament to his insatiable hunger for knowledge and a multidimensional perspective.

His formal education is enriched by a constellation of certifications—spanning disciplines as diverse as Financial Markets, Crisis Management, Social Media Strategy, Transformational Leadership, and Environmental Communication.
Each certificate is not merely a feather in his cap, but an arrow in his quiver— ready to be unleashed in the battle for truth, equity, and intellectual integrity.

Latest News

News
Franklin Templeton Brings Benji Platform To BNB Chain | 3.0 TV

Franklin Templeton Brings Benji Platform To BNB Chain

Franklin Templeton has announced the integration of its Benji Technology Platform with BNB Chain, marking another step in its push toward tokenizing...

News
Nasdaq-listed Fitell Shares Drop After $10M Solana Buy

Nasdaq-listed Fitell Shares Drop After $10M Solana Buy

Fitell, a Nasdaq-listed fitness equipment company, saw its shares plunge 21% after announcing a $10 million acquisition of Solana tokens as part...

News
Gate Launches New Layer 2 Network Alongside GT Tokenomics Update

Gate Launches New Layer 2 Network Alongside GT Tokenomics Update

Gate has officially unveiled Gate Layer, a layer 2 scaling solution aimed at supporting high-performance blockchain transactions. Built on the Optimism Stack...

News
Hyperliquid Stablecoin Goes Live After Fierce Bidding For Issuance Rights

Hyperliquid Stablecoin Goes Live After Fierce Bidding For Issuance Rights

Hyperliquid, a decentralized derivatives platform, has officially launched its native stablecoin USDH following a closely contested validator vote on September 14. The...

Latest Blogs

How to Create Your First Cryptocurrency Token: A Beginner’s Guide

Why Create Your Own Crypto Token? The increasing popularity of blockchain technology and its applications leads more people to explore token creation...

How Hackers Stole $44M from CoinDCX Without Touching User Wallets?

A Shocking Crypto Breach The crypto market experienced major instability during July and August 2025 after CoinDCX India’s leading exchange suffered a...

What are Political Memecoins? A Beginner’s Guide

The Meme Coin Evolution Digital currencies have undergone significant changes because of recent trends in online interactions. The concept of digital currencies...

How to Buy Ethereum: A Beginner’s Guide

Why Ethereum? Digital currencies continue to transform rapidly while Ethereum emerges as a major player which attracts both seasoned investors and newcomers...

Related Articles

Why Interoperability is the Holy Grail of Web3 in 2025? | Web3 Trends

Web3 and the Concept of Interoperability What is Blockchain Interoperability? As the...

What Are Utility NFTs & How Do They Work? | 3.0TV

Demystifying Utility NFT By Ruchi Sharma   NFTs are often thought of...

What is Artificial Narrow Intelligence (ANI)? | 3.0TV

Artificial Narrow Intelligence, Explained By Kapil Rajyaguru Artificial intelligence has become one of...

Compressed NFTs: Redefining the Future of Digital Assets

Compressed NFTs: The New Revolution By Ruchi Sharma Many creators and builders...