What is Supervised Learning and Its Top Examples? (2024)

  • What is Supervised Learning?
  • 3 Examples of Supervised Learning
  • What are the Types of Supervised Learning?
  • Steps Involved in Supervised Learning
  • Advantages and Disadvantages
  • View All

With the rise of big data, supervised learning has become critical for industries such as finance, healthcare, and e-commerce. To appreciate exactly why it has gained such importance, let’s first understand what supervised learning is. In simple terms, supervised learning is a standard machine learning technique that involves training a model with labeled data. This blog will explain the fundamentals of supervised learning, its types, algorithms, and applications. We will also go over the steps involved in implementing supervised learning and some of the challenges that come with it.

Supervised learning is a type of machine learning in which a computer algorithm learns to make predictions or decisions based on labeled data. Labeled data is made up of previously known input variables (also known as features) and output variables (also known as labels). By analyzing patterns and relationships between input and output variables in labeled data, the algorithm learns to make predictions. Image and speech recognition, recommendation systems, and fraud detection are all examples of how supervised learning is used. The examples below will help explain what supervised learning is.

3 Examples of Supervised Learning

Email Filtering

Supervised learning is commonly used in email filtering to classify incoming emails as spam or legitimate. A machine learning algorithm is trained using a labeled dataset containing examples of both spam and legitimate emails. The algorithm then extracts relevant information from each email, such as the sender’s information, the subject, the message body, and so on. It learns from the labeled dataset to identify patterns and relationships between these features and their corresponding labels (spam or legitimate). Once trained, the algorithm can use the extracted features to predict the label of new, unseen emails. If an email is predicted to be spam, it can be automatically filtered into a spam folder, saving the user’s inbox space.

Credit Scoring

In credit scoring, supervised learning is used to predict the creditworthiness of loan applicants. A labeled dataset containing examples of past loan applicants and their credit history, income, employment status, and other relevant factors is used to train a machine learning algorithm. The algorithm learns to recognize patterns and relationships between these features and their corresponding labels, such as whether or not the loan was repaid. Once trained, the algorithm can predict loan repayment likelihood for new loan applicants based on their input features.

Voice Recognition

Supervised learning is utilized in voice recognition to help virtual assistants and other applications recognize and understand spoken commands. A labeled dataset of spoken words and phrases with corresponding text transcripts is used to train a machine learning algorithm in such scenarios. The algorithm learns to recognize relationships between spoken word audio features such as pitch, amplitude, and frequency and their textual representations from the labeled dataset. Following the training phase, the algorithm can begin analyzing new audio inputs and attempting to transcribe them into text form. This allows virtual assistants to understand and respond to spoken commands like managing reminders, playing music, or controlling smart home devices.

ALSO READ: What’s the Fate of AI in 2023? 8 Pathbreaking Technology Trends

Regression

Regression is a supervised learning method for determining the relationship between dependent and independent variables. In addition, it employs labeled datasets in an algorithm to forecast continuous output for various data. Here, it is widely used in situations where the output must be a single value, such as weight or height. There are two types of regression:

  1. Linear regression: This is used to detect the relationship between two variables and to make future predictions. It is further subdivided according to the number of independent and dependent variables. Simple linear regression, for example, is used when there is only one independent and one dependent variable. Multiple linear regression is used when there are two or more independent and dependent variables.
  2. Logistic regression: Logistic regression is used when the dependent variable is categorical or has binary outputs such as ‘yes’ or ‘no’. Since logistic regression is used to solve binary classification problems, it predicts discrete values for variables.

Naive Bayes

The Naive Bayes algorithm is well-suited for large datasets because each program in the algorithm operates independently, and the presence of one feature has no effect on the other. Its applications include text classification, and recommendation systems, among others. There are various Naive Bayes models of which the decision tree is commonly used in business. A decision tree, unlike a flowchart, is a supervised learning algorithm composed of control statements containing decisions and their consequences. Iterative Dichotomiser 3 (ID3) and Classification algorithm and Regression Trees (CART) are two popular decision tree algorithms used in a variety of industries.

Classification

Classification is a type of supervised learning algorithm which involves the process of accurately assigning data to different categories or classes. In essence, it entails identifying and analyzing specific entities in order to determine the appropriate category or class. K-nearest neighbor, Random forest, Support vector machines, Decision trees, and Linear classifiers are some popular classification algorithms.

Neutral Networks

Neutral Networks perform the process of grouping or categorizing raw data. Additionally, this algorithm is also employed in the interpretation of sensory data and the identification of patterns. The algorithm’s use, however, is limited due to the need for high computational resources.

Random Forest

The random forest algorithm is known as an ensemble method as it combines multiple supervised learning techniques to make a conclusion. Moreover, it uses several decision trees to classify each tree, making it a popular choice in a variety of industries.

ALSO READ: What is Unsupervised Learning? What Benefits Does it Offer?

Steps Involved in Supervised Learning

The following are some of the common steps involved in supervised learning:

  • Gather labeled data
  • Divide the data into two sets: Training and Testing
  • Select an appropriate algorithm
  • On the training set, train the algorithm
  • Analyze the algorithm’s performance on the testing set
  • If necessary, fine-tune the model to improve performance
  • Make predictions on new, unlabeled data using the trained model

When implemented in a professional context, supervised learning can foster a healthy workplace environment that prioritizes ongoing education and supports a culture of continuous growth.

Some of its chief advantages include:

  • It gathers previous data, which aids in learning from past mistakes
  • It is a powerful Artificial Intelligence (AI) tool that can handle a wide range of business functions on its own
  • It is a reliable algorithm

Some of the drawbacks of supervised learning are:

  • Large data sets tend to be difficult to categorize
  • To operate, a certain level of expertise is required
  • It takes a long time to process

To conclude, supervised learning is a well-known machine learning technique used for training models to predict outputs based on input data. With proper model selection and training, supervised learning can be a powerful tool for solving a wide variety of real-world problems. To learn more about these subjects, explore these machine learning and artificial intelligence courses offered by Emeritus in association with the best universities around the world.

Write to us at content@emeritus.org

What is Supervised Learning and Its Top Examples? (2024)
Top Articles
Latest Posts
Article information

Author: Saturnina Altenwerth DVM

Last Updated:

Views: 5926

Rating: 4.3 / 5 (64 voted)

Reviews: 95% of readers found this page helpful

Author information

Name: Saturnina Altenwerth DVM

Birthday: 1992-08-21

Address: Apt. 237 662 Haag Mills, East Verenaport, MO 57071-5493

Phone: +331850833384

Job: District Real-Estate Architect

Hobby: Skateboarding, Taxidermy, Air sports, Painting, Knife making, Letterboxing, Inline skating

Introduction: My name is Saturnina Altenwerth DVM, I am a witty, perfect, combative, beautiful, determined, fancy, determined person who loves writing and wants to share my knowledge and understanding with you.