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Case Based Reasoning – Overview

In this article, we are going to study about case based reasoning(CBR) in detail and will discuss the overview of Case Based Reasoning in machine learning and it’s working cycle and finally concluded with it’s benefits and limitations. Let’s discuss it one by one.

Case Based Reasoning :
Case-Based Reasoning(CBR) resolve new problems by adjusting previously fortunate solutions to alike problems. Roger Schank is widely held to be the beginning of CBR. He proposed a unalike sight on model-based reasoning stimulated by human logical and memory organization.



Basis of CBR :
Here, we will discuss the basis key parameters of CBR.

  1. Regularity- 
    The identical steps executed under the same circumstances will tend to have the same or alike outcomes.
     
  2. Typicality- 
    Experiences tend to repeat themselves.
     
  3. Consistency- 
    Minor switch in the circumstances require merely small changes in the explanation and in the effect.
     
  4. Adaptability- 
    When things replicate, the dissimilarities tend to be minute, and the small differences are uncomplicated to repay for.

Working Cycle of CBR : 
Here, we will discuss the working cycle of CBR.



Knowledge in CBR :
Vocabulary includes the knowledge necessary for choosing the features utilized to describe the cases.

Benefits of CBR :
Here, we will discuss the benefits of CBR.

Limitations :
Here, we will discuss the limitations of CBR.

References :
https://en.wikipedia.org/wiki/Case-based_reasoning

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