St. Xavier's University, Kolkata
Fr. Arrupe Central Library
Online Public Access Catalogue

Machine learning (Record no. 14419)

MARC details
000 -LEADER
fixed length control field 08705nam a22002057a 4500
005 - DATE & TIME
control field 20260218155324.0
008 - FIXED-LENGTH DATA ELEMENTS--GENERAL INFORMATION
fixed length control field 260218b |||||||| |||| 00| 0 eng d
020 ## - ISBN
International Standard Book Number 9788197424984
Price 995.00
040 ## - CATALOGING SOURCE
Original cataloging agency S.X.U.K
041 ## - Language
Language English
082 ## - DDC NUMBER
Classification number R 006.31 ROB(MAC)
100 ## - MAIN ENTRY--PERSONAL NAME
Personal name Robin, C R Rene
245 ## - TITLE STATEMENT
Title Machine learning
Sub Title : a hands-on approach
Statement of responsibility C R Rene Robin, Doreen Robin, Chandra Mouli P V S S R
260 ## - PUBLICATION, DISTRIBUTION, ETC. (IMPRINT)
Place of publication, distribution, etc Kolkata
Name of publisher, distributor, etc University press
Date of publication, distribution, etc c2025
300 ## - PHYSICAL DESCRIPTION
Pages xiv, 804p.
Other Details P.B.
500 ## - GENERAL NOTE
General note Chapter 1 Introduction to Machine Learning<br/>Introduction | What is Machine Learning? | History of Machine Learning | Role of Machine Learning in Computer Science and Problem Solving | Why Machine Learning? | Adaptivity of Machine Learning | Designing versus Learning | Training versus Testing in Machine Learning | Machine Learning versus Automation | Predictive and Descriptive Tasks in Machine Learning | Some Terminology Related to Machine Learning | Types of Machine Learning | Passive Learning versus Active Learning | Online versus Batch Machine Learning | Differences between Machine Learning Models and Algorithms<br/>| Disadvantages of Data-driven Solutions | Well-posed Machine Learning Problems | Designing a Learning System (Life Cycle of Machine Learning)<br/><br/>Chapter 2 Probability Theory and Statistics in Machine Learning<br/>Introduction | Probability | Probability Theory | Joint, Marginal, and Conditional Probability | Statistics | Key Concepts of Probability Distributions | Probability Distributions | Examples of Probability Distributions | Conditional Distribution | Joint Distribution | Combinatorics | Probability Rules and Axioms | Moment Generating Function | Maximum Likelihood Estimation | Density Functions | Density Estimation | Challenges and Future Directions in Probability and Statistics for Machine Learning<br/><br/>Chapter 3 Linear Algebra<br/>Introduction | Linear Regression | Matrix Decomposition | Vectors and Matrices | Eigenvalue and Eigenvectors | Norms and Vector Spaces | Optimization | Linear Transformation | Cramer’s Rule | Gaussian Elimination | LU Decomposition | QR Decomposition | Eigen Decomposition | Symmetric Matrices | Orthogonalization | Deep Learning with Linear Algebra<br/><br/>Chapter 4 Algorithms and Complex Optimizations<br/>Sets, Relations, and Functions | Convex Sets and Convex Functions | Optimization Problems | Convex Optimization | Unconstrained Optimization | Constrained Optimization | Dual Optimization Problems | Dynamic Programming | Sublinear Algorithms | Graphs | Transforms | Information Theory | Manifolds<br/><br/>Chapter 5 Computational Learning Theory<br/>Introduction | Objectives of Computational Learning Theory | History | Importance of Computational Learning Theory | The Main Methods | Probably Approximately Correct Learning | Complexity Theory of Machine Learning | Mistake-bound Learning Model | Instance-based learning | Lazy and Eager Learning | Generative Learning | Consistent Learning | Worst Case (Online) Learning | Applications of Computational Learning Theory | Evaluation Metrics for Computational Learning Theory | Future Directions in Computational Learning Theory<br/><br/>Chapter 6 Machine Learning Models<br/>Introduction | Models in Machine Learning | Features | Concept Learning<br/><br/>Chapter 7 Unsupervised Learning<br/>Introduction | What and Why of Unsupervised Learning | Types of Unsupervised Learning | Markov Models | Hidden Markov Model | Matrix Factorization and Matrix Completion Models | Generative Models | Latent Factor Models | Inference Models | Non-negative Matrix Factorization | Advantages of Unsupervised Learning | Disadvantages of Unsupervised Learning<br/><br/>Chapter 8 Supervised Learning: Classification<br/>Introduction | K-Nearest Neighbor (KNN) | Decision Trees | Random Forests | Linear Classifiers | Applications of Supervised Learning | Limitations and Challenges of Supervised Learning<br/><br/>Chapter 9 Supervised Learning: Regression<br/>Introduction | Linear Regression versus Non-Linear Regression | Types of Linear Models | Least Squares Method (LSM) | Multivariate Linear Regression | Nonlinearity and Kernel Methods | Generalized Linear Models | AdaBoost (Adaptive Boosting) | Regularized Regression | Backpropagation | Support Vector Regression | Decision Tree Regression | Random Forest Regression | Neural Network Regression |<br/>Multi-layer Propagation | Radial Basis Functions | Splines | Curse of Dimensionality | Interpolations and Basis Functions | Multi-class/Structured Outputs, Ranking<br/><br/>Chapter 10 Artificial Neural Networks<br/>Introduction to Neural Networks | Introduction to Artificial Neural Networks | Types of Artificial Neural Networks | Other Types of ANNs | Building Neural Network Architectures | Training Neural Networks with Backpropagation | Autoencoders | Applications of ANNs | Future of ANNs<br/><br/>Chapter 11 Trends in Machine Learning<br/>Reinforcement Learning | Multitask Learning | Online Learning | Sequence Learning | Prediction Learning | Bagging and Boosting in Machine Learning | Trends in Machine Learning Technology<br/><br/>Chapter 12 Applications of Machine Learning in Various Industries<br/>Real-World Problems Solved by Machine Learning | Applications of Machine Learning in the Retail Industry | Applications of Machine Learning in the Logistics Industry | Applications of Machine Learning in the Manufacturing Industry | Applications of Machine Learning in the Energy and Utilities Industry | Applications of Machine Learning in the Travel Industry | Applications of Machine Learning in the Banking Industry | Applications of Machine Learning in the Finance Industry | Applications of Machine Learning in the Insurance Industry<br/><br/>Chapter 13 Machine Learning Programming: Capstone Projects Using Python and R<br/>Introduction | Installing Python | The sklearn Package | Anaconda Navigator | Data Operations on the Iris Data Set | Finding Outliers | Removing Outliers | Imputing Null Values | Capping the Outlier Values | Splitting the Data into Training and Testing Data | Training and Evaluating the Model | Regularization Techniques that Prevent Overfitting | Implement Linear Regression | Implement Logistic Regression | Decision Tree Classifier | Implement SVM | Implement PCA | Implement Steepest Descent | Implement Random Forest | Implement Random Search | Implement Naïve Bayes | Implement Single-Layer Perceptron Learning Algorithm | Implement Radial Basis Functions | Implement Linear Classifier | Implement Bayesian Classifier | Implement K-Nearest Neighbor Classifier | Implement Linear Discriminant Analysis | Implement Locality Preserving Projection | Implement Logic Gates without Perceptron Model | Implement Logic Gates with Perceptron Model | Handwritten Classification using CNN | Introduction to R Programming<br/><br/>Chapter 14 Machine Learning Programming Using Jupyter Notebook<br/>Introduction | Using the Online Interface of Jupyter Notebook | A Python Program that Demonstrates the Use of Data Types | A Python Program that Asks for User Input and Uses Conditional Statements to Respond with Different Outputs | A Python Program that Prints Out a Sequence of Numbers using a for Loop and then Asks the User to Do the Same with a while Loop | A Python Program that Defines a Function to Calculate the Area of a Circle, Given its Radius, and then Calls that Function with Different Values | A Python Program that Creates a List of Items and a Dictionary of Key–Value Pairs, and then Demonstrates How to Access and Modify Elements | A Python Program that Reads a Text File, Counts the Number of Words, and Writes the Result to a New File | A Python Program that Intentionally Raises an Error and then Catches it with a try-except Block, Printing an Informative Message to the User | A Program to Define a Python Class with Attributes and Methods to Demonstrate OOP | A Program to Use the Matplotlib Library to Plot a Graph based on the Given Data Points, and Enhancing the Graph with Labels and a Legend | A Program to Introduce the pandas Library by Creating a DataFrame from a Dictionary, and Performing Basic Data Manipulation Operations such as Sorting and Filtering | Basic Operations Using the Iris Data Set | Iris Data Loading and Visualization | Data Processing | Feature Selection | Classification Algorithm: SVM | Classification Algorithm: Decision Tree | Classification Algorithm: KNN | Classification Algorithm: Logistic Regression | Model Evaluation | Hyperparameter Tuning | Cross-validation | Ensemble Methods | Clustering Analysis | Deep Learning | Deep Learning: Keras<br/><br/>Appendix A: Model Course Structure<br/>Appendix B: Model Question Papers<br/>
650 ## - Subject
Subject Machine learning
700 ## - Added Entry Personal Name
Relator Code auth.
Added Entry Personal Name Robin, Doreen
-- P V S S R Mouli, Chandra
942 ## - ADDED ENTRY ELEMENTS (KOHA)
Koha item type REFERENCE COMPUTER SCIENCE
Holdings
Withdrawn status Lost status Source of classification or shelving scheme Damaged status Not for loan Koha collection Location (home branch) Sublocation or collection (holding branch) Shelving location Date acquired Source of acquisition Cost, normal purchase price Serial Enumeration / chronology Koha issues (times borrowed) Koha full call number Barcode (Accession No.) Koha date last seen Copy Number Price effective from Koha item type
    Dewey Decimal Classification   Not For Loan Reference St. Xavier's University, Kolkata St. Xavier's University, Kolkata Reference Section 02/18/2026 K.M. Enterprise 995.00 S.X.U.K   R 006.31 ROB(MAC) UCS13934 02/18/2026 13934 02/18/2026 REFERENCE COMPUTER SCIENCE
    Dewey Decimal Classification       St. Xavier's University, Kolkata St. Xavier's University, Kolkata Lending Section 02/18/2026 K.M. Enterprise 995.00 S.X.U.K   006.31 ROB(MAC) CS13935 02/18/2026 13935 02/18/2026 COMPUTER SCIENCE
    Dewey Decimal Classification       St. Xavier's University, Kolkata St. Xavier's University, Kolkata Lending Section 02/18/2026 K.M. Enterprise 995.00 S.X.U.K   006.31 ROB(MAC)C1 CS13936 02/18/2026 13936 02/18/2026 COMPUTER SCIENCE
St. Xaviers University, Kolkata
St. Xavier's University, Kolkata ,Action Area III B, New Town, Kolkata - 700 160


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