001489916 000__ 07906nam\\22004693i\4500 001489916 001__ 1489916 001489916 003__ MiAaPQ 001489916 005__ 20240402003255.0 001489916 006__ m\\\\\o\\d\\\\\\\\ 001489916 007__ cr\cn\nnnunnun 001489916 008__ 240328s2023\\\\xx\\\\\\o\\\\\|||\0\eng\d 001489916 020__ $$a9789815124422 001489916 020__ $$z9789815124439 001489916 035__ $$a(MiAaPQ)EBC30410702 001489916 035__ $$a(Au-PeEL)EBL30410702 001489916 035__ $$a(OCoLC)1373348089 001489916 040__ $$aMiAaPQ$$beng$$erda$$epn$$cMiAaPQ$$dMiAaPQ 001489916 1001_ $$aChopra, Deepti. 001489916 24510 $$aIntroduction to Machine Learning with Python. 001489916 250__ $$a1st ed. 001489916 264_1 $$aSharjah :$$bBentham Science Publishers,$$c2023. 001489916 264_4 $$c©2023. 001489916 300__ $$a1 online resource (139 pages). 001489916 336__ $$atext$$btxt$$2rdacontent 001489916 337__ $$acomputer$$bc$$2rdamedia 001489916 338__ $$aonline resource$$bcr$$2rdacarrier 001489916 5050_ $$aCover -- Title -- Copyright -- End User License Agreement -- Contents -- Foreword -- Preface -- CONSENT FOR PUBLICATION -- CONFLICT OF INTEREST -- ACKNOWLEDGEMENT -- Introduction to Python -- INTRODUCTION -- Web Development -- Game Development -- Artificial Intelligence and Machine Learning -- Desktop GUI -- SETTING UP PYTHON ENVIRONMENT -- Steps Involved In Installing Python On Windows Include The Following: -- Steps involved in installing Python on Macintosh include the following -- Setting Up Path -- Setting Up Path In The Unix/linux -- WHY PYTHON FOR DATA SCIENCE? -- ECOSYSTEM FOR PYTHON MACHINE LEARNING -- ESSENTIAL TOOLS AND LIBRARIES -- Jupyter Notebook -- Pip Install Jupiter -- NumPy -- Pandas -- Scikit-learn -- SciPy -- Matplotlib -- Mglearn -- PYTHON CODES -- CONCLUSION -- EXERCISES -- REFERENCES -- Introduction To Machine Learning -- INTRODUCTION -- DESIGN A LEARNING SYSTEM -- Selection Of Training Set -- Selection Of Target Function -- Selection Of A Function Approximation Algorithm -- PERSPECTIVE AND ISSUES IN MACHINE LEARNING -- Issues In Machine Learning -- Quality of Data -- Improve the Quality of Training -- Overfitting the Training Data -- Machine Learning Involves A Complex Process -- Insufficient training data -- Feasibility of Learning An Unknown Target Function -- Collection of Data -- Pre-processing of Data -- Finding The Model That Will Be Best For The Data -- Training and Testing Of The Developed Model Evaluation -- In Sample Error and Out of Sample Error -- APPLICATIONS OF MACHINE LEARNING -- Virtual Personal Assistants -- Traffic Prediction -- Online Transportation Networks -- Video Surveillance System -- Social Media Services -- People you May Know -- Face Recognition -- Similar Pins -- Sentiment Analysis -- Email Spam and Malware Filtering -- Online Customer Support -- Result Refinement of a Search Engine. 001489916 5058_ $$aProduct Recommendations -- Online Fraud Detection -- Online Gaming -- Financial Services -- Healthcare -- Oil and Gas -- Self-driving Cars -- Automatic Text Translation -- Dynamic Pricing -- Classification of News -- Information Retrieval -- Robot Control -- CONCLUSION -- EXERCISES -- REFERENCES -- Linear Regression and Logistic Regression -- INTRODUCTION -- LINEAR REGRESSION -- Linear Regression In One Variable -- Linear Regression In Multiple Variables -- Overfitting and Regularization In Linear Regression -- GRADIENT DESCENT -- POLYNOMIAL REGRESSION -- Features of Polynomial Regression -- LOGISTIC REGRESSION -- Overfitting and Regularisation in Logistic Regression -- BINARY CLASSIFICATION AND MULTI-CLASS CLASSIFICATION -- Binary Classification Tests -- Classification Accuracy -- Error Rate -- Sensitivity -- Specificity -- PYTHON CODES -- CONCLUSION -- EXERCISES -- REFERENCES -- Support Vector Machine -- INTRODUCTION -- SUPPORT VECTOR CLASSIFICATION -- The Maximal Margin Classifier -- Soft Margin Optimization -- Linear Programming Support Vector Machines -- SUPPORT VECTOR REGRESSION -- Kernel Ridge Regression -- Gaussian Processes -- APPLICATIONS OF SUPPORT VECTOR MACHINE -- Text Categorisation -- Image Recognition -- Bioinformatics -- PYTHON CODE -- CONCLUSION -- EXERCISES -- REFERENCES -- Decision Trees -- INTRODUCTION -- REGRESSION TREES -- STOPPING CRITERION AND PRUNING LOSS FUNCTIONS IN DECISION TREE -- CATEGORICAL ATTRIBUTES, MULTIWAY SPLITS AND MISSING VALUES IN DECISION TREES -- ISSUES IN DECISION TREE LEARNING -- Preventing Overfitting of Data -- Incorporating Continuous Valued Attributes -- Other Measures for Attributes Selection -- Handling Missing Values -- Handling of Attributes with Differing Costs -- INSTABILITY IN DECISION TREES -- PYTHON CODE -- CONCLUSION -- EXERCISES -- REFERENCES -- Neural Network -- INTRODUCTION -- EARLY MODELS. 001489916 5058_ $$aPERCEPTRON LEARNING -- BACKPROPAGATION -- AN ILLUSTRATIVE EXAMPLE: FACE RECOGNITION -- STOCHASTIC GRADIENT DESCENT -- ADVANCED TOPICS IN ARTIFICIAL NEURAL NETWORK -- Alternative Error Functions -- Alternative Error Minimization Mechanism -- Recurrent Networks -- Dynamically Modifying Network Structures -- PYTHON CODES -- REFERENCES -- Supervised Learning -- INTRODUCTION -- USING STATISTICAL DECISION THEORY -- Gaussian or Normal Distribution -- Conditionally Independent Binary Components -- LEARNING BELIEF NETWORKS -- NEAREST-NEIGHBOUR METHODS -- CONCLUSION -- EXERCISES -- REFERENCES -- Unsupervised Learning -- INTRODUCTION -- CLUSTERING -- K-means Clustering -- Hierarchical Clustering -- Principal Component Analysis (PCA) -- PYTHON CODE -- CONCLUSION -- EXERCISES -- REFERENCES -- Theory of Generalisation -- INTRODUCTION -- BOUNDING THE TESTING ERROR -- VAPNIK CHERVONENKIS INEQUALITY -- PROOF OF VC INEQUALITY -- CONCLUSION -- EXERCISES -- REFERENCES -- Bias and Fairness in Ml -- INTRODUCTION -- HOW TO DETECT BIAS? -- HOW TO FIX BIASES OR ACHIEVE FAIRNESS IN ML? -- CONFIDENCE INTERVALS -- HYPOTHESIS TESTING -- COMPARING LEARNING ALGORITHMS -- CONCLUSION -- EXERCISES -- REFERENCES -- Appendix -- CONCLUSION -- Subject Index -- Back Cover. 001489916 506__ $$aAccess limited to authorized users. 001489916 520__ $$aMachine learning is a subfield of artificial intelligence, broadly defined as a machine's capability to imitate intelligent human behavior. Like humans, machines become capable of making intelligent decisions by learning from their past experiences. Machine learning is being employed in many applications, including fraud detection and prevention, self-driving cars, recommendation systems, facial recognition technology, and intelligent computing. This book helps beginners learn the art and science of machine learning. It presens real-world examples that leverage the popular Python machine learning ecosystem, The topics covered in this book include machine learning basics: supervised and unsupervised learning, linear regression and logistic regression, Support Vector Machines (SVMs). It also delves into special topics such as neural networks, theory of generalisation, and bias and fairness in machine learning. After reading this book, computer science and engineering students - at college and university levels - will receive a complete understanding of machine learning fundamentals and will be able to implement neural network solutions in information systems, and also extend them to their advantage. 001489916 588__ $$aDescription based on publisher supplied metadata and other sources. 001489916 655_0 $$aElectronic books 001489916 7001_ $$aKhurana, Roopal. 001489916 77608 $$iPrint version:$$aChopra, Deepti$$tIntroduction to Machine Learning with Python$$dSharjah : Bentham Science Publishers,c2023$$z9789815124439 001489916 852__ $$bebk 001489916 85640 $$3ProQuest Ebook Central Academic Complete $$uhttps://univsouthin.idm.oclc.org/login?url=https://ebookcentral.proquest.com/lib/usiricelib-ebooks/detail.action?docID=30410702$$zOnline Access 001489916 909CO $$ooai:library.usi.edu:1489916$$pGLOBAL_SET 001489916 980__ $$aBIB 001489916 980__ $$aEBOOK 001489916 982__ $$aEbook 001489916 983__ $$aOnline