erillisskaalausta
Erillisskaalausta, a Finnish term, translates to "separate scaling" or "individual scaling" in English. It refers to a method of adjusting or representing data where each variable or attribute is scaled independently of the others. This is in contrast to methods that scale variables jointly or relative to each other.
In practice, erillisskaalausta is often applied in data preprocessing for machine learning algorithms. Before feeding data
The primary purpose of erillisskaalausta is to prevent features with larger numerical ranges from dominating those