图书介绍
迁移学习 理论与实践pdf电子书版本下载
- 邵浩著 著
- 出版社: 上海:上海交通大学出版社
- ISBN:9787313106568
- 出版时间:2013
- 标注页数:121页
- 文件大小:16MB
- 文件页数:130页
- 主题词:数据采集-研究
PDF下载
下载说明
迁移学习 理论与实践PDF格式电子书版下载
下载的文件为RAR压缩包。需要使用解压软件进行解压得到PDF格式图书。建议使用BT下载工具Free Download Manager进行下载,简称FDM(免费,没有广告,支持多平台)。本站资源全部打包为BT种子。所以需要使用专业的BT下载软件进行下载。如 BitComet qBittorrent uTorrent等BT下载工具。迅雷目前由于本站不是热门资源。不推荐使用!后期资源热门了。安装了迅雷也可以迅雷进行下载!
(文件页数 要大于 标注页数,上中下等多册电子书除外)
注意:本站所有压缩包均有解压码: 点击下载压缩包解压工具
图书目录
Chapter 1 Introduction 1
1.1 Background and Motivation 1
1.2 Contributions 5
1.2.1 Extended MDLP for Transfer Learning 5
1.2.2 Compact Coding for Hyperplane Classifiers in Transfer Learning 6
1.2.3 Transfer Active Learning 7
1.2.4 Gaussian Process for Transfer Learning 8
1.3 Book Overview 9
Chapter 2 Literature Review and Preliminaries for MDLP 10
2.1 Transfer Learning 10
2.2 Active Learning and Transfer Active Learning 13
2.3 Preliminaries for MDLP 14
Chapter 3 Extended MDL Principle for Feature-based Transfer Learning 17
3.1 Introduction 17
3.2 Problem Statement 20
3.3 Preliminaries for Encoding 21
3.3.1 Theoretical Foundation of the EMDLP 22
3.3.2 Adaptation of the EMDLP to Our Problem 25
3.4 Supervised Inductive Transfer Learning Algorithm 30
3.4.1 EMDLP with Incremental Search 30
3.4.2 EMDLP with Hill Climbing 33
3.5 Experiments 36
3.5.1 Experimental Settings 36
3.5.2 Experimental Results on Synthetic Data Sets 40
3.5.3 Experimental Results on Real Data Sets 45
3.6 Summary 52
Chapter 4 Compact Coding for Hyperplane Classifiers in a Heterogeneous Environment 53
4.1 Introduction 53
4.2 Problem Setting 55
4.3 Compact Coding for Hyperplane Classifiers in Heterogeneous Environment 56
4.3.1 Macro Level:Arrange Related Tasks 57
4.3.2 Micro Level Evaluation 61
4.3.3 The Transfer Learning Algorithm 62
4.4 Experiments 63
4.4.1 Experimental Setting 63
4.4.2 Experimental Results 65
4.5 Summary 71
Chapter 5 Adaptive Transfer Learning with Query by Committee 72
5.1 Introduction 72
5.2 Problem Setting and Preliminaries 75
5.3 Probabilistic Framework for ALTL 78
5.4 The ALTL Algorithm and Analysis 81
5.4.1 The Procedure of ALTL 81
5.4.2 Termination Condition and Analysis 83
5.5 Experiments 85
5.5.1 Experimental Setting 85
5.5.2 Results on Synthetic Data Sets 85
5.5.3 Results on Real Data Sets 89
5.6 Summary 93
Chapter 6 Gaussian Process for Transfer Learning through Minimum Encoding 94
6.1 Introduction 94
6.2 Gaussian Process for Classification 96
6.3 The GPTL Algorithm 97
6.3.1 Arrange Related Tasks 97
6.3.2 The Instance Level Similarities 99
6.4 Experiments 100
6.5 Summary 104
Chapter 7 Concluding Comments 106
Appendix A Target Concepts in Chapter 3 110
Bibliography 113