sampeliõpistust
Sampeliõpistust, often translated as "sampling" or "sampling-based learning," is a fundamental concept in machine learning and statistics. It refers to the process of selecting a subset of data points from a larger dataset to train a model or perform statistical analysis. The underlying principle is that a representative sample can provide sufficient information about the entire population without the need to process or store every single data point. This is particularly crucial when dealing with massive datasets, where analyzing the complete data is computationally infeasible or prohibitively expensive.
The effectiveness of sampeliõpistust hinges on the quality of the sample. A sample that accurately reflects
The benefits of employing sampeliõpistust are manifold. It significantly reduces computational costs, accelerates training times for