Blog_Banner_Asset
    Homebreadcumb forward arrow iconBlogbreadcumb forward arrow iconArtificial Intelligencebreadcumb forward arrow iconRandom Forest Vs Decision Tree: Difference Between Random Forest and Decision Tree

Random Forest Vs Decision Tree: Difference Between Random Forest and Decision Tree

Last updated:
24th Jun, 2024
Views
Read Time
10 Mins
share image icon
In this article
Chevron in toc
View All
Random Forest Vs Decision Tree: Difference Between Random Forest and Decision Tree

Recent advancements have paved the growth of multiple algorithms. These new and blazing algorithms have set the data on fire. They help in handling data and making decisions with them effectively. Since the world is dealing with an internet spree. Almost everything is on the internet. To handle such data, we need rigorous algorithms to make decisions and interpretations. Now, in the presence of a wide list of algorithms, it’s a hefty task to choose the best suited. 

Have you ever heard the terms decision tree random forest? If not, then keep on reading to get a detailed insight on decision tree random forest and learn how they are different from each other. The following article will also shed some light on the advantages of random forest over decision tree. 

Decision-making algorithms are widely used by most organizations. They have to make trivial and big decisions every other hour. From analyzing which material to choose to get high gross areas, a decision is happening in the backend. The recent python and ML advancements have pushed the bar for handling data. Thus, data is present in huge bulks. The threshold depends on the organization. There are 2 major decision algorithms widely used. Decision Tree and Random Forest- Sounds familiar, right?

Trees and forests! 

Ads of upGrad blog

Let’s explore this with an easy example.

Suppose you have to buy a packet of Rs. 10 sweet biscuits. Now, you have to decide one among several biscuits’ brands. 

You choose a decision tree algorithm. Now, it will check the Rs. 10 packet, which is sweet. It will choose probably the most sold biscuits. You will decide to go for Rs. 10 chocolate biscuits. You are happy!

But your friend used the Random forest algorithm. Now, he has made several decisions. Further, choosing the majority decision. He chooses among various strawberry, vanilla, blueberry, and orange flavors. He checks that a particular Rs. 10 packet served 3 units more than the original one. It was served in vanilla chocolate. He bought that vanilla choco biscuit. He is the happiest, while you are left to regret your decision.

Join the Machine Learning Course from the World’s top Universities – Masters, Executive Post Graduate Programs, and Advanced Certificate Program in ML & AI to fast-track your career.

What is the difference between the Decision Tree and Random Forest?

1. Decision Tree

Source

Decision Tree is a supervised learning algorithm used in machine learning. It operated in both classification and regression algorithms. As the name suggests, it is like a tree with nodes. The branches depend on the number of criteria. It splits data into branches like these till it achieves a threshold unit. A decision tree has root nodes, children nodes, and leaf nodes.

Recursion is used for traversing through the nodes. You need no other algorithm. It handles data accurately and works best for a linear pattern. It handles large data easily and takes less time.

How does it work?

1. Splitting

Data, when provided to the decision tree, undergoes splitting into various categories under branches. 

Must Read: Naive Bayes Classifier: Pros & Cons, Applications & Types Explained

2. Pruning

Pruning is shredding of those branches furthermore. It works as a classification to subsidize the data in a better way. Like, the same way we say pruning of excess parts, it works the same. The leaf node is reached, and pruning ends. It’s a very important part of decision trees.

3. Selection of trees

Now, you have to choose the best tree that can work with your data smoothly.

Here are the factors that need to be considered: 

4. Entropy 

To check the homogeneity of trees, entropy needs to be inferred. If the entropy is zero, it’s homogenous; else not.

5. Knowledge gain

Once the entropy is decreased, the information is gained. This information helps to split the branches further.

  • You need to calculate the entropy.
  • Split the data on the basis of different criteria
  • Choose the best information.

Tree depth is an important aspect. The depth informs us of the number of decisions one needs to make before we come up with a conclusion. Shallow depth trees perform better with decision tree algorithms. 

Must Read: Free nlp online course!

Advantages and Disadvantages of Decision Tree

The list mentioned below highlights the major strengths and weaknesses of decision tree.

Advantages

  1. Easy
  2. Transparent process
  3. Handle both numerical and categorical data
  4. Larger the data, the better the result
  5. Speed 
  6. Can generate understandable rules.
  7. Has the ability to perform classification without the need for much computation.
  8. Gives a clear indication of the most important fields for classification or prediction.

Disadvantages

  1. May overfit
  2. Pruning process large
  3. Optimization unguaranteed
  4. Complex calculations
  5. Deflection high
  6. Can be less appropriate for estimation tasks, especially in cases where the ultimate aim is to determine a continuous attribute’s value. 
  7. Are more prone to errors in classification problems 
  8. Can be computationally expensive to train. 

Checkout: Machine Learning Models Explained

2. Random Forest

Source

What is Random Forest?

Random Forest is yet another very popular supervised machine learning algorithm that is used in classification and regression problems. One of the main features of this algorithm is that it can handle a dataset that contains continuous variables, in the case of regression. Simultaneously, it can also handle datasets containing categorical variables, in the case of classification. This in turn helps to deliver better results for classification problems. 

It is also used for supervised learning but is very powerful. It is very widely used. The basic difference being it does not rely on a singular decision. It assembles randomized decisions based on several decisions and makes the final decision based on the majority.

It does not search for the best prediction. Instead, it makes multiple random predictions. Thus, more diversity is attached, and prediction becomes much smoother.

Best Machine Learning and AI Courses Online

You can infer Random forest to be a collection of multiple decision trees!

Bagging is the process of establishing random forests while decisions work parallelly.

1. Bagging

  • Take some training data set
  • Make a decision tree
  • Repeat the process for a definite period
  • Now take the major vote. The one that wins is your decision to take.

2. Bootstrapping

Bootstrapping is randomly choosing samples from training data. This is a random procedure. 

STEP by STEP

  • Random choose conditions
  • Calculate the root node
  • Split
  • Repeat
  • You get a forest

Read : Naive Bayes Explained

In-demand Machine Learning Skills

Advantages and Disadvantages of Random Forest

Advantages

  1. Powerful and highly accurate
  2. No need to normalizing
  3. Can handle several features at once
  4. Run trees in parallel ways
  5. Can perform both regression and classification tasks.
  6. Produces good prediction that is easily understandable.

Disadvantages

  1. They are biased to certain features sometimes
  2. Slow- One of the major disadvantages of random forest is that due to the presence of a large number of trees, the algorithm can become quite slow and ineffective for real-time predictions. 
  3. Can not be used for linear methods
  4. Worse for high dimensional data
  5. Since the random forest is a predictive modeling tool and not a descriptive one, it would be better to opt for other methods, especially if you are trying to find out the description of the relationships in your data. 

Difference between random forest and decision tree:

FeatureDecision TreeRandom Forest
Basic StructureSingle treeEnsemble of multiple trees
TrainingTypically fasterSlower due to training multiple trees
Bias-Variance TradeoffProne to overfittingReduces overfitting by averaging predictions
PerformanceCan suffer from high varianceMore robust due to averaging predictions
Prediction SpeedFasterSlower due to multiple predictions
InterpretabilityEasier to interpretMore difficult to interpret due to complexity
Handling OutliersSensitive (can overfit)Less sensitive due to averaging
Feature ImportanceCan rank featuresCan rank features based on importance
Data RequirementsWorks well with small to moderate datasetsCan handle large datasets better
ParallelizationNot easily parallelizableEasily parallelizable training
ApplicationOften used as a base modelOften used when higher accuracy is required

What are some of the important features of Random Forest?

Now that you have a basic understanding of the difference between random forest decision tree, let’s take a look at some of the important features of random forest that sets it apart. The following random forest decision tree list will also highlight some of the advantages of random forest over decision tree. 

  • Diversity-  Each tree is different, and does not consider all the features. This means that not all features and attributes are considered while making an individual tree. 
  • Parallelization – You get to make full use of the CPU to build random forests. The reason behind this being each tree is created out of different data and attributes, independently. 
  • Stability- Random forest ensures full stability since the result is based on majority voting or averaging. 
  • Train-test Split- Last but not least, yet another important feature of random forest is that you don’t have to separate the data for train and test since 30% of the data unseen by the decision tree is always available. 

When exploring random forest vs decision tree python implementations, decision trees offer simplicity and quick setup, while random forests enhance accuracy and robustness by averaging multiple trees.

For a clear random forest vs decision tree example, consider a classification task: a decision tree might quickly classify data but risks overfitting, while a random forest combines multiple trees to improve accuracy and reduce overfitting.

Popular AI and ML Blogs & Free Courses

Conclusion

Decision trees are very easy as compared to the random forest. A decision tree combines some decisions, whereas a random forest combines several decision trees. Thus, it is a long process, yet slow.

Ads of upGrad blog

Whereas, a decision tree is fast and operates easily on large data sets, especially the linear one. The random forest model needs rigorous training. When you are trying to put up a project, you might need more than one model. Thus, a large number of random forests, more the time. 

It depends on your requirements. If you have less time to work on a model, you are bound to choose a decision tree. However, stability and reliable predictions are in the basket of random forests. 

If you have the passion and want to learn more about artificial intelligence, you can take up IIIT-B & upGrad’s PG Diploma in Machine Learning and Deep Learning that offers 400+ hours of learning, practical sessions, job assistance, and much more.

Profile

Pavan Vadapalli

Blog Author
Director of Engineering @ upGrad. Motivated to leverage technology to solve problems. Seasoned leader for startups and fast moving orgs. Working on solving problems of scale and long term technology strategy.
Get Free Consultation

Selectcaret down icon
Select Area of interestcaret down icon
Select Work Experiencecaret down icon
By clicking 'Submit' you Agree to  
UpGrad's Terms & Conditions

Our Popular Machine Learning Course

Frequently Asked Questions (FAQs)

1How is random forest different from a normal decision tree?

In machine learning, a Decision Tree is a supervised learning technique. It is capable of working with both classification and regression techniques. It resembles a tree with nodes, as the name implies. The amount of criteria determines the branches. It divides data into these branches until it reaches a threshold unit. There are root nodes, child nodes, and leaf nodes in a decision tree. Random forest is also used for supervised learning, although it has a lot of power. It's quite popular. The main distinction is that it does not rely on a single decision. It assembles randomized decisions based on many decisions and then creates a final decision depending on the majority.

2What are the main advantages of using a random forest versus a single decision tree?

In an ideal world, we'd like to reduce both bias-related and variance-related errors. This issue is well-addressed by random forests. A random forest is nothing more than a series of decision trees with their findings combined into a single final result. They are so powerful because of their capability to reduce overfitting without massively increasing error due to bias. Random forests, on the other hand, are a powerful modelling tool that is far more resilient than a single decision tree. They combine numerous decision trees to reduce overfitting and bias-related inaccuracy, and hence produce usable results.

3What is a limitation of decision trees?

One of decision trees' drawbacks is that they are very unstable when compared to other choice predictors. A slight change in the data might cause a significant change in the structure of the decision tree, resulting in a result that differs from what consumers would expect in a typical event. Furthermore, when the main purpose is to forecast the result of a continuous variable, decision trees are less helpful in making predictions.

4What are the advantages of random forest over single decision tree?

Random Forests offer improved predictive accuracy and robustness compared to single Decision Trees by averaging predictions from multiple trees, thereby reducing overfitting and handling a wider range of data characteristics effectively.

5Does random forest always outperform decision tree?

Random Forest doesn't always outperform Decision Trees. While Random Forests reduce overfitting and offer better generalization by averaging predictions from multiple trees, Decision Trees can sometimes perform better on smaller datasets or when interpretability of individual predictions is crucial.

Explore Free Courses

Suggested Blogs

15 Interesting MATLAB Project Ideas & Topics For Beginners [2024]
82457
Diving into the world of engineering and data science, I’ve discovered the potential of MATLAB as an indispensable tool. It has accelerated my c
Read More

by Pavan Vadapalli

09 Jul 2024

5 Types of Research Design: Elements and Characteristics
47126
The reliability and quality of your research depend upon several factors such as determination of target audience, the survey of a sample population,
Read More

by Pavan Vadapalli

07 Jul 2024

Biological Neural Network: Importance, Components & Comparison
50612
Humans have made several attempts to mimic the biological systems, and one of them is artificial neural networks inspired by the biological neural net
Read More

by Pavan Vadapalli

04 Jul 2024

Production System in Artificial Intelligence and its Characteristics
86790
The AI market has witnessed rapid growth on the international level, and it is predicted to show a CAGR of 37.3% from 2023 to 2030. The production sys
Read More

by Pavan Vadapalli

03 Jul 2024

AI vs Human Intelligence: Difference Between AI & Human Intelligence
112983
In this article, you will learn about AI vs Human Intelligence, Difference Between AI & Human Intelligence. Definition of AI & Human Intelli
Read More

by Pavan Vadapalli

01 Jul 2024

Career Opportunities in Artificial Intelligence: List of Various Job Roles
89547
Artificial Intelligence or AI career opportunities have escalated recently due to its surging demands in industries. The hype that AI will create tons
Read More

by Pavan Vadapalli

26 Jun 2024

Gini Index for Decision Trees: Mechanism, Perfect & Imperfect Split With Examples
70805
As you start learning about supervised learning, it’s important to get acquainted with the concept of decision trees. Decision trees are akin to
Read More

by MK Gurucharan

24 Jun 2024

Basic CNN Architecture: Explaining 5 Layers of Convolutional Neural Network
270717
Introduction In the last few years of the IT industry, there has been a huge demand for once particular skill set known as Deep Learning. Deep Learni
Read More

by MK Gurucharan

21 Jun 2024

Top 10 Challenges in Artificial Intelligence in 2024
44690
Have you ever heard about Neuralink? It is a budding start-up company co-founded by Elon Musk that is working on some serious Artificial Intelligence
Read More

by Pavan Vadapalli

18 Jun 2024

Schedule 1:1 free counsellingTalk to Career Expert
icon
footer sticky close icon