1. INTRODUCTION TO INVERSION THEORY
2. ELEMENTS OF PROBABILITY THEORY
3. VECTOR SPACES OF MODELS AND DATA
4. PRINCIPLES OF REGULARIZATION THEORY
5. LINEAR INVERSE PROBLEMS
6. PROBABILISTIC METHODS OF INVERSE PROBLEM SOLUTION
7. GRADIENT-TYPE METHODS OF NON-LINEAR INVERSION
8. JOINT INVERSION BASED ON ANALYTICAL AND STATISTICAL RELATIONSHIPS BETWEEN DIFFERENT PHYSICAL PROPERTIES
9. JOINT INVERSION BASED ON STRUCTURAL SIMILARITIES
10. JOINT FOCUSING INVERSION OF MULTIPHYSICS DATA
11. JOINT MINIMUM ENTROPY INVERSION
12. GRAMIAN METHOD OF GENERALIZED JOINT INVERSION
13. PROBABILISTIC APPROACH TO GRAMIAN INVERSION
14. SIMULTANEOUS PROCESSING AND FUSION OF MULTIPHYSICS DATA AND IMAGES
15. MACHINE LEARNING IN THE CONTEXT OF INVERSION THEORY
16. MACHINE LEARNING INVERSION OF MULTIPHYSICS DATA
17. MODELING AND INVERSION OF POTENTIAL FIELD DATA
18. CASE HISTORIES OF JOINT INVERSION OF GRAVITY AND MAGNETIC DATA