Statistical learning for biomedical data /
by
Malley, James D
; Malley, Karen G
; Pajevic, Sinisa
.
Material type: 




Item type | Current location | Call number | Copy number | Status | Notes | Date due | Barcode |
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KAMPALA UNIVERSITY NURSING SCHOOL General Section | WA950 M253 2011 (Browse shelf) | 1 | Available | Accessible | 3568 | |
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KAMPALA UNIVERSITY NURSING SCHOOL General Section | WA950 M253 2011 (Browse shelf) | 2 | Available | item available in hard copy | 3567 | |
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KAMPALA UNIVERSITY NURSING SCHOOL General Section | WA950 M253 2011 (Browse shelf) | 3 | Available | item available in hard copy | 3570 | |
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KAMPALA UNIVERSITY NURSING SCHOOL General Section | WA950 M253 2011 (Browse shelf) | 4 | Available | item available in hard copy | 3569 | |
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KAMPALA UNIVERSITY NURSING SCHOOL General Section | WA950 M253 2011 (Browse shelf) | 5 | Available | item available in hard copy | 3571 |
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WA950 M253 2011 Statistical learning for biomedical data / | WA950 M253 2011 Statistical learning for biomedical data / | WA950 M253 2011 Statistical learning for biomedical data / | WA950 M253 2011 Statistical learning for biomedical data / | WA950. T5841 1998 An introduction to epidemiology / | WB13 .P74 1984 Preventions' new encyclopedia of common diseases / | WB18 H322 1991. Harrison's principles of internal medicine--PreTest self-assessment and review / |
Includes bibliographical references and index
CONTENTS
Part I. Introduction
Part II. A machine toolkit
Part III. Analysis fundamentals
Part IV. Machine strategies
Part I. Introduction -- 1. Prologue -- 1.1. Machines that learn -- some recent history -- 1.2. Twenty canonical questions -- 1.3. Outline of the book -- 1.4. A comment about example datasets -- 1.5. Software -- 2. The landscape of learning machines -- 2.1. Introduction -- 2.2. Types of data for learning machines -- 2.3. Will that be supervised or unsupervised? -- 2.4. An unsupervised example -- 2.5. More lack of supervision -- where are the parents? -- 2.6. Engines, complex and primitive -- 2.7. Model richness means what, exactly? -- 2.8. Membership or probability of membership? -- 2.9. A taxonomy of machines? -- 2.10. A note of caution -- one of many -- 2.11. Highlights from the theory -- 3. A mangle of machines -- 3.1. Introduction -- 3.2. Linear regression -- 3.3. Logistic regression -- 3.4. Linear discriminant -- 3.5. t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t g t
"This book is for anyone who has biomedical data and needs to identify variables that predict an outcome, for two-group outcomes such as tumor/not-tumor, survival/death, or response from treatment. Statistical learning machines are ideally suited to these types of prediction problems, especially if the variables being studied may not meet the assumptions of traditional techniques. Learning machines come from the world of probability and computer science but are not yet widely used in biomedical research."--Publisher's website
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