Home › Glossary › Data › Downsampling

Intermediate · Data

Downsampling

Visual diagram · (in preparation) · Math · (in preparation) · Worked example · 3 difficulty levels.

TL;DR. Reducing the number of data points, either by lowering resolution or selecting fewer examples from an over-represented class.

Technical Definition

Reducing the number of data points, either by lowering resolution or selecting fewer examples from an over-represented class.

How it works

Downsampling can refer to two distinct processes: reducing the dimensionality or resolution of data (like shrinking image size) or decreasing the number of samples in an over-represented class within a dataset. In imbalanced datasets, downsampling the majority class helps prevent the model from being biased towards it and improves performance on the minority class.

Related Concepts

  • Feature Selection — Choosing the most useful subset of features to improve performance and interpretability.
  • Data Imbalance — When some classes or groups are vastly more frequent in the dataset than others.

Further Reading

  • Google ML Glossary