VTU Notes | 18CS71 | ARTIFICIAL INTELLIGENCE AND MACHINE LEARNING

VTU Module-2 | Concpet Learning

Module-2

  • 4.9
  • 2018 Scheme | CSE Department

18CS71 | ARTIFICIAL INTELLIGENCE AND MACHINE LEARNING | Module-2 VTU Notes




Concept learning is a fundamental aspect of machine learning, where the goal is to induce general rules or concepts from specific examples. The concept learning task involves acquiring knowledge about a target concept based on a set of training instances. Two prominent approaches to conceptualize this process are the Find-S algorithm and the Candidate Elimination algorithm.

 

In the concept learning framework, the process is often viewed as a search through the hypothesis space to find a hypothesis that accurately represents the target concept. This search is guided by the available examples and aims to discover a hypothesis that can correctly classify both the positive and negative instances in the training data.

 

The Find-S algorithm is a simple and intuitive approach to concept learning. It starts with the most specific hypothesis and incrementally generalizes it based on positive examples in the training set. The final hypothesis is the most general one consistent with all positive instances.

 

The Candidate Elimination algorithm, on the other hand, maintains both the most specific and most general hypotheses throughout the learning process. It iteratively updates these hypotheses based on positive and negative examples, gradually narrowing down the hypothesis space until a single consistent hypothesis is reached. This algorithm is more flexible and capable of handling noise and inconsistencies in the training data.

 

The inductive bias of the Candidate Elimination algorithm refers to the inherent assumptions and preferences that guide the learning process. In this algorithm, the bias is towards maintaining a version space that includes the correct hypothesis. The algorithm starts with the assumption that the target concept lies within a certain hypothesis space and refines this space based on observed examples. The inductive bias helps the algorithm make more efficient and effective generalizations from limited data, contributing to its robustness in real-world scenarios.

 

In summary, concept learning involves the discovery of general rules from specific examples. The Find-S algorithm and the Candidate Elimination algorithm are two approaches that tackle this task, with the latter exhibiting a more flexible and robust behavior. The inductive bias of the Candidate Elimination algorithm guides the learning process, allowing it to make reasonable generalizations even in the presence of noise and uncertainty in the training data.

Course Faq

Announcement

AcquireHowTo

Admin 1 year ago

Upcomming Updates of the AcquireHowTo

  • -- CGPA/SGPA Calculator with University Filter.
  • -- Student Projects Guide and Download.
  • -- Article Publishing platform for different categories.
  • -- Courses for students on different topics.
  • -- Student Dashboard for AcquireHowTo Products.
  • -- Online Portal to buy Minor Projects and Major Projects.
  • -- Last year Exams Question paper .
  • These all updates are comming soon on our portal. Once the updates roll out you will be notified.

18CS71 | ARTIFICIAL INTELLIGENCE AND MACHINE LEARNING Vtu Notes
7th
Semester
2862
Total Views

7th Sem CSE Department VTU Notes
Full lifetime access
10+ downloadable resources
Assignments
Question Papers

© copyright 2021 VtuNotes child of AcquireHowTo