Case-based learning (CBL) is a machine learning method in which a system learns from solving previous cases similar to the current task.
In this method, the system uses a case base that contains a number of previously solved cases that are similar to the current task. The system uses this information to search for similar cases and apply the previous solution to the current task.
The CBL process consists of three phases: retrieval, adaptation and evaluation. In the retrieval phase, the system searches for similar cases in the database. In the adaptation phase, the system modifies the solution of the previous case to fit the current task. In the evaluation phase, the system evaluates the proposed solution and compares it with the optimal solution.
Case-based learning is used in a variety of applications, such as medical diagnostic problem solving, pattern recognition, decision making, task planning, among others.
Churn, or customer churn rate, is a constant challenge for today's businesses. The ability to retain customers is a constant challenge for today's companies.
Read More »Achieving business goals and tracking success is an important aspect of improving any business. In sales, measuring the progress of [...]
Read More »If you've ever wondered how Spotify recommends songs you like or how Siri and Alexa can understand what you say to them... the answer is that you can [...]
Read More »You now have everything you need to get down to work and start working with your company's data. After overcoming the first few hurdles of the [...]
Read More »