Describe Machine Learning and highlight its key differences from traditional programming Methods.
Machine Learning Question Papers - SPPU University
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Machine Learning
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Machine Learning Questions
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2025 Aug INSEM
Q1
15 MarksExplain the main difference between Linear Discriminant Analysis (LDA) and Principal Component Analysis (PCA) in reducing dimensions.
Write a note on Reinforcement Learning.
Q2
15 MarksWhat is a logical model in the context of Machine Learning?
What distinguishes unsupervised learning from supervised and semi-supervised learning techniques?
Explain Grouping and Grading models in a machine learning with example?
Q3
15 MarksElaborate decision tree regression and random forest regression.
Differentiate between multivariate regression from univariate regression?
Explain bias-variance trade-off with neat diagram.
Q4
15 MarksWhich one of these is Underfit or Overfit? Why? Comment with respect to Bias and Variance.
Explain any two evaluation metrics in regression model.
List and Explain any two different types of Regression.
| Subject Name | Machine Learning |
|---|---|
| Semester | VII |
| Pattern Year | 2019 |
| Subject Code | 417521 |
| Max Marks | 30 |
| Total Questions | 4 |
| Duration | 1 Hour |
| Paper Number | [6580]-693 |
| Academic Year | B.E. |
| Branch Name | Artificial Intelligence and Data Science |
| Exam Type | INSEM |
| Exam Session | 2025 Aug INSEM |
| Watermark | ['CEGP013091', '49.248.216.237 19/08/2025 13:32:26 static-237'] |
2024 Sep INSEM
Q1
15 MarksDescribe Machine Learning and differentiate it from traditional programming.
Explain Principal Component Analysis used in Machine Learning.
Explain the relationship between Artificial Intelligence, Machine Learning and data science.
Q2
15 MarksExplain types of Machine Learning.
Explain Linear Discriminant Analysis (LDA) used in Machine Learning.
Differentiate Grouping and Grading models of Machine Learning.
Q3
15 MarksExplain three evaluation metrics used for regression model.
Explain the Random forest Regression.
Differentiate between Regression and Correlation.
Q4
15 MarksWhat is Regression? Explain types of Regressions.
Explain Bias-Variance Trade-off with respect to Machine Learning.
Differentiate Ridge and Lasso Regression techniques.
| Subject Name | Machine Learning |
|---|---|
| Semester | VII |
| Pattern Year | 2019 |
| Subject Code | 417521 |
| Max Marks | 30 |
| Total Questions | 4 |
| Duration | 1 Hour |
| Paper Number | [6361]-188 |
| Academic Year | B.E. |
| Branch Name | AIDS |
| Exam Type | INSEM |
| Exam Session | 2024 Sep INSEM |
| Watermark | ['CEGP013091', '49.248.216.238 31/08/2024 13:38:08 static-238'] |
2023 Sep INSEM
Q1
15 MarksCompare Machine Learning with Traditional programming.
What is Dimensionality Reduction, Explain any one Dimensionality Reduction technique.
Write a note on Reinforcement Learning.
Q2
15 MarksExplain parametric & nonparametric models in machine learning.
Differentiate supervised and unsupervised learning techniques.
Elaborate grouping and grading models.
Q3
15 MarksElaborate random forest regression.
Differentiate multivariate regression and univariate regression.
Define Regression. Explain types of regression.
Q4
15 MarksWhat is underfitting and overfitting in machine Learning explain the techniques to reduce overfitting?
Explain any two Evaluation Metrics for regression.
Explain Elastic Net regression in Machine Learning.
| Subject Name | Machine Learning |
|---|---|
| Semester | VII |
| Pattern Year | 2019 |
| Subject Code | 417521 |
| Max Marks | 30 |
| Total Questions | 4 |
| Duration | 1 Hour |
| Paper Number | [6188]-290 |
| Academic Year | B.E. |
| Branch Name | A. I. D. S. |
| Exam Type | INSEM |
| Exam Session | 2023 Sep INSEM |
| Watermark | ['CEGP013091', '49.248.216.238 04/09/2023 13:59:27 static-238'] |
2025 Nov Dec ENDSEM
Q1
18 MarksExplain evaluation measures (SSE, MSE) for regression model. For a given data having 100 examples, if squared errors SEI, SE2, and SE3 are 13.33, 3.33 and 4.00 respectively, calculate Mean Squared Error (MSE). State the formula for MSE.
Explain K nearest neighbor classification algorithm with suitable example.
What are kernel functions in SVM? Describe the Radial Basis Kernel, Gaussian, Polynomial, and Sigmoid kernel
Q2
18 MarksExplain Baysian Linear Regression.
Differentiate between balanced and imbalanced classification.
Explain the concept of a soft margin SVM. How does it differ from a hard margin SVM?
Q3
17 MarksExplain the DBSCAN algorithm. How does it work? What are its advantages and disadvantages.
Discuss the applications of clustering techniques in market segmentaion, social network analysis, image segmentation, and anomaly detection. Provide examples for each application.
Q4
17 MarksDescribe the Gaussian Mixture Model (GMM) for distribution-based clustering. How is it different from other clustering algorithms?
Explain the K-Means clustering algorithm. What are its advantages and disadvantages.
Q5
18 MarksExplain the concept of ensemble learning. Why is ensemble learning considered beneficial in machine learning?
Discuss the concept of stacking in ensemble learning. What are the different methods used for variance reduction in stacking?
Describe the Random Forest ensemble method in detail.
Q6
18 MarksDifferentiate between homogeneous and heterogeneous ensemble methods. provide examples of each type.
Describe the concept of a voting ensemble. What are the different types of voting techniques?
Explain the Adaptive Boosting (AdaBoost) algorithm in detail.
Q7
17 MarksDefine reinforcement learning. Why is reinforcement learning important in the field of machine learning?
Explain Markov’s Decision Process (MDP). What is the Markov property in the context of MDP?
Q8
17 MarksIntroduce Q-learning. What are the important terms used in Q-learning? How does Q-learning work?
Compare and contrast supervised, unsupervised, and reinforcement learning. Provide examples of each type.
| Subject Name | Machine Learning |
|---|---|
| Semester | VII |
| Pattern Year | 2019 |
| Subject Code | 417521 |
| Max Marks | 70 |
| Total Questions | 8 |
| Duration | 2½ Hours |
| Paper Number | [6584]-383 |
| Academic Year | B.E. |
| Branch Name | AIDS |
| Exam Type | ENDSEM |
| Exam Session | 2025 Nov Dec ENDSEM |
| Watermark | ['CEGP013091', '49.248.216.237 12/12/2025 13:38:26 static-237'] |
2024 Nov Dec ENDSEM
Q1
18 MarksWhat are kernel functions in SVM? Describe the Radial Basis Kernel, and Sigmoid kernel.
Write formula for accuracy, precision, recall and f1-score. Calculate accuracy, precision, recall and f1-score for given example. Actual Values (Cancer, No Cancer) Predicted Values (Cancer, No Cancer)
Q2
18 MarksExplain any 4 evaluation measures of Multiclass classification.
Differentiate Balanced and Imbalanced Classification.
Write a detailed note on K Nearest Neighbour algorithm with suitable example.
Q3
17 MarksDifferentiate Agglomerative Hierarchical Clustering and Divisive Hierarchical Clustering.
What is clustering? Elaborate Types of Clustering.
Q4
17 MarksExplain DBSCAN algorithm with advantages and disadvantages.
Describe centroid based clustering algorithm and explain any one type with example.
Q5
18 MarksExplain Following with respect to Ensemble learning. i) Need of Ensemble Learning ii) Advantages of Ensemble methods iii) Ensemble learning limitations
Elaborate stacking approach of ensemble with example.
Q6
18 MarksDescribe ensemble learning. Explain Gradient Boosting ensemble learning techniques.
Explain any three voting mechanism in ensemble learning.
Q7
17 MarksDifferentiate supervised and unsupervised learning with example.
Explain Reinforcement Learning need and its types in detail?
Q8
17 MarksExplain following terms: i) Belman Equation ii) Markov Chain iii) Q table iv) Q function
How does the Markov property relate to Reinforcement Learning? Why is it important?
| Subject Name | Machine Learning |
|---|---|
| Semester | VII |
| Pattern Year | 2019 |
| Subject Code | 417521 |
| Max Marks | 70 |
| Total Questions | 8 |
| Duration | 2½ Hours |
| Paper Number | [6354]-781 |
| Academic Year | B.E. |
| Branch Name | AIDS |
| Exam Type | ENDSEM |
| Exam Session | 2024 Nov Dec ENDSEM |
| Watermark | ['CEGP013091', '49.248.216.237 11/12/2024 14:08:07 static-237'] |
2023 Nov Dec ENDSEM
Q1
18 MarksApply K-Nearest Neighbor Algorithm (KNN) on following data. Predict the student result for values physics = 6 marks, Chemistry = 8 marks. Consider number of neighbours K = 3 and Euclidean Distance as distance measure. Physics (marks) Chemistry (marks) Results 4 3 Fail 6 7 Pass 7 8 Pass 5 5 Fail 8 8 Pass
Explain support Vector Machine classification algorithm with suitable example.
Q2
18 MarksExplain any 4 evaluation measures of Binary classification with example?
Explain construction of multi-classifier. i) One Vs. All approach ii) One Vs One approach
Differentiate between Binary - vs - Multiclass Classification.
Q3
17 MarksExplain K - Means clustering algorithm and states the advantages and disadvantages of k-means clustering algorithm.
Explain Gaussian mixture model with example.
Q4
17 MarksElaborate need of clustering and explain how the elbow method is used to decide the value of cluster k.
Explain Divisive Hierarchical clustering (DHC) algorithm with example.
Q5
18 MarksDifferentiate the Bagging and Boosting approach of ensemble learning.
Explain different types of voting mechanisms in ensemble learning.
Explain AdaBoost algorithm in detail.
Q6
18 MarksCompare Homogeneous and Heterogeneous ensemble methods.
What is the ensemble learning? Explain any two ensemble learning techniques.
Explain random forest ensembles with an example.
Q7
17 MarksExplain following terms: i) Markov Property ii) Bellman Equation iii) Markov Reward Process iv) Markov Chain
Explain Q-Learning algorithm with an example.
Q8
17 MarksWhat is Reinforcement Learning? Explain the real time applications of reinforcement learning.
Explain following terms : i) Supervised Learning. ii) Unsupervised Learning. iii) Reinforcement Learning.
| Subject Name | Machine Learning |
|---|---|
| Semester | VII |
| Pattern Year | 2019 |
| Subject Code | 417521 |
| Max Marks | 70 |
| Total Questions | 8 |
| Duration | 2½ Hours |
| Paper Number | [6181]-404 |
| Academic Year | B.E. |
| Branch Name | AI & DS |
| Exam Type | ENDSEM |
| Exam Session | 2023 Nov Dec ENDSEM |
| Watermark | ['CEGP013091', '49.248.216.238 30/11/2023 13:42:16 static-238'] |