valikmasinõppimine
Valikmasinõppimine, also known as selective machine learning, is a subset of machine learning that focuses on algorithms and techniques designed to handle datasets with missing or incomplete information. Unlike traditional machine learning methods, which often require complete datasets, valikmasinõppimine is capable of making predictions even when some data is missing.
The primary goal of valikmasinõppimine is to improve the robustness and reliability of machine learning models
One of the key advantages of valikmasinõppimine is its ability to reduce the risk of biased or
However, valikmasinõppimine also presents challenges. The effectiveness of these methods depends on the nature and extent
Overall, valikmasinõppimine represents a significant advancement in the field of machine learning, offering a more resilient