- Broschiertes Buch
- Merkliste
- Auf die Merkliste
- Bewerten Bewerten
- Teilen
- Produkt teilen
- Produkterinnerung
- Produkterinnerung
This book starts with basic conceptual level of machine learning and goes on to explain the basis of machine learning algorithms. The mathematical foundations required are outlined along with their associations to machine learning. A comprehensive account of various aspects of ethical machine learning has been discussed.
Andere Kunden interessierten sich auch für
Kevin B. KorbBayesian Artificial Intelligence169,99 €
Mark KanazawaResearch Methods for Environmental Studies169,99 €
Masashi SugiyamaStatistical Reinforcement Learning108,99 €
Wojtek J. KrzanowskiROC Curves for Continuous Data109,99 €
Dothang TruongData Science and Machine Learning for Non-Programmers93,99 €
Kao-Tai TsaiMachine Learning for Knowledge Discovery with R109,99 €
Keith McNultyHandbook of Graphs and Networks in People Analytics231,99 €-
-
-
This book starts with basic conceptual level of machine learning and goes on to explain the basis of machine learning algorithms. The mathematical foundations required are outlined along with their associations to machine learning. A comprehensive account of various aspects of ethical machine learning has been discussed.
Produktdetails
- Produktdetails
- Verlag: Chapman and Hall/CRC
- Seitenzahl: 480
- Erscheinungstermin: 27. Juni 2025
- Englisch
- Abmessung: 254mm x 178mm x 26mm
- Gewicht: 895g
- ISBN-13: 9781032268293
- ISBN-10: 1032268298
- Artikelnr.: 74065183
- Herstellerkennzeichnung
- Libri GmbH
- Europaallee 1
- 36244 Bad Hersfeld
- gpsr@libri.de
- Verlag: Chapman and Hall/CRC
- Seitenzahl: 480
- Erscheinungstermin: 27. Juni 2025
- Englisch
- Abmessung: 254mm x 178mm x 26mm
- Gewicht: 895g
- ISBN-13: 9781032268293
- ISBN-10: 1032268298
- Artikelnr.: 74065183
- Herstellerkennzeichnung
- Libri GmbH
- Europaallee 1
- 36244 Bad Hersfeld
- gpsr@libri.de
T V Geetha is a retired Senior Professor of Computer Science and Engineering with over 35 years of teaching experience in the areas of Artificial Intelligence, Machine Learning, Natural Language Processing and Information Retrieval. Her research interests include semantic, personalized and deep web search, semi-supervised learning for Indian languages, application of Indian philosophy to knowledge representation and reasoning, machine learning for adaptive e-learning, and application of machine learning and deep learning to biological literature mining and drug discovery. She is a recipient of the Young Women Scientist Award from the Government of Tamilnadu and Women of Excellence Award from Rotract Club of Chennai. She is a receipt of BSR Faculty Fellowship for Superannuated Faculty from University Grants Commission, Government of India for 2020-2023. S Sendhilkumar is working as Associate Professor in Department of Information Science and Technology, CEG, Anna University with 18 years of teaching experience in the areas of Data Mining, Machine Learning, Data Science and Social Network Analytics. His research interests include personalized information retrieval, Bibliometrics and social network mining. He is recipient of CTS Best Faculty Award for the year 2018 and awarded with Visvesvaraya Young Faculty Research Fellowship by Ministry of Electronics and Information Technology (MeitY), Government of India for 2019-2021.
1. Introduction. 2. Understanding Machine Learning. 3. Mathematiccal
Foundations and Machine Learning. 4. Foundations and categoris of Machine
Learning Techniques. 5. Machine Learning: Tool and Software 6.
Classification Algorithms. 7. Probabilistic and Regression based
approaches. 8. Performance Evaluation & Ensemble Methods. 9. Unsupervised
Learning. 10. Sequence Models. 11. Reinforcement Learning. 12. Machine
Learning Applications - Approaches. 13. Domain based Machine Learning
Applications. 14. Ethical Aspects of Machine Learning. 15. Introduction to
Deep Learning and Convolutional Neural Networks. 16. Other Models of Deep
Learning and Applications of Deep Learning.
Foundations and Machine Learning. 4. Foundations and categoris of Machine
Learning Techniques. 5. Machine Learning: Tool and Software 6.
Classification Algorithms. 7. Probabilistic and Regression based
approaches. 8. Performance Evaluation & Ensemble Methods. 9. Unsupervised
Learning. 10. Sequence Models. 11. Reinforcement Learning. 12. Machine
Learning Applications - Approaches. 13. Domain based Machine Learning
Applications. 14. Ethical Aspects of Machine Learning. 15. Introduction to
Deep Learning and Convolutional Neural Networks. 16. Other Models of Deep
Learning and Applications of Deep Learning.
1. Introduction. 2. Understanding Machine Learning. 3. Mathematiccal Foundations and Machine Learning. 4. Foundations and categoris of Machine Learning Techniques. 5. Machine Learning: Tool and Software 6. Classification Algorithms. 7. Probabilistic and Regression based approaches. 8. Performance Evaluation & Ensemble Methods. 9. Unsupervised Learning. 10. Sequence Models. 11. Reinforcement Learning. 12. Machine Learning Applications - Approaches. 13. Domain based Machine Learning Applications. 14. Ethical Aspects of Machine Learning. 15. Introduction to Deep Learning and Convolutional Neural Networks. 16. Other Models of Deep Learning and Applications of Deep Learning.
1. Introduction. 2. Understanding Machine Learning. 3. Mathematiccal
Foundations and Machine Learning. 4. Foundations and categoris of Machine
Learning Techniques. 5. Machine Learning: Tool and Software 6.
Classification Algorithms. 7. Probabilistic and Regression based
approaches. 8. Performance Evaluation & Ensemble Methods. 9. Unsupervised
Learning. 10. Sequence Models. 11. Reinforcement Learning. 12. Machine
Learning Applications - Approaches. 13. Domain based Machine Learning
Applications. 14. Ethical Aspects of Machine Learning. 15. Introduction to
Deep Learning and Convolutional Neural Networks. 16. Other Models of Deep
Learning and Applications of Deep Learning.
Foundations and Machine Learning. 4. Foundations and categoris of Machine
Learning Techniques. 5. Machine Learning: Tool and Software 6.
Classification Algorithms. 7. Probabilistic and Regression based
approaches. 8. Performance Evaluation & Ensemble Methods. 9. Unsupervised
Learning. 10. Sequence Models. 11. Reinforcement Learning. 12. Machine
Learning Applications - Approaches. 13. Domain based Machine Learning
Applications. 14. Ethical Aspects of Machine Learning. 15. Introduction to
Deep Learning and Convolutional Neural Networks. 16. Other Models of Deep
Learning and Applications of Deep Learning.
1. Introduction. 2. Understanding Machine Learning. 3. Mathematiccal Foundations and Machine Learning. 4. Foundations and categoris of Machine Learning Techniques. 5. Machine Learning: Tool and Software 6. Classification Algorithms. 7. Probabilistic and Regression based approaches. 8. Performance Evaluation & Ensemble Methods. 9. Unsupervised Learning. 10. Sequence Models. 11. Reinforcement Learning. 12. Machine Learning Applications - Approaches. 13. Domain based Machine Learning Applications. 14. Ethical Aspects of Machine Learning. 15. Introduction to Deep Learning and Convolutional Neural Networks. 16. Other Models of Deep Learning and Applications of Deep Learning.







