Machine Learning: An Artificial Intelligence Approach
Material type:
- 9783662124079
- 006.31 MAC
Item type | Current library | Item location | Collection | Call number | Status | Date due | Barcode | Item holds | |
---|---|---|---|---|---|---|---|---|---|
![]() |
NIMA Knowledge Centre | 7th Floor Silence Zone | Reference | 006.31 MAC (Browse shelf(Opens below)) | Not For Loan | T0049712 |
Part – 1: General issues in machine learning
An overview of machine learning
Why should machines learn?
Part – 2: Learning from examples
A comparative review of selected methods for learning from examples
A theory and methodology of inductive learning
Part – 3: Learning in problem-solving and planning
Learning by analogy: formulating and generalizing plans from past experience
Learning by experimentation: acquiring and refining problem-solving heuristics
Acquisition of proof skills in geometry
Using proofs and refutations to learn from experience
Part – 4: Learning from observation and discovery
The role of heuristics in learning by discovery: three case studies
Rediscovering chemistry with the bacon system
Learning from observation: conceptual clustering
Part – 5: Learning from instruction
Machine transformation of advice into a heuristic search procedure
Learning by being told: acquiring knowledge for information management
The instructible production system: a retrospective analysis
Part – 6: Applied learning systems
Learning efficient classification procedures and their application to chess end games
Inferring student models for intelligent computer-aided instruction
Comprehensive bibliography of machine learning
There are no comments on this title.