Regression analysis
- العربية
- Asturianu
- Azərbaycanca
- Български
- বাংলা
- Bosanski
- Català
- Čeština
- Dansk
- Deutsch
- Ελληνικά
- English
- Esperanto
- Español
- Eesti
- Euskara
- فارسی
- Suomi
- Français
- Gaeilge
- Galego
- עברית
- हिन्दी
- Magyar
- Bahasa Indonesia
- Ido
- Íslenska
- Italiano
- 日本語
- Jawa
- 한국어
- Latviešu
- Монгол
- Nederlands
- Norsk nynorsk
- Norsk bokmål
- Polski
- Português
- Română
- Русский
- Slovenščina
- Српски / srpski
- Sunda
- Svenska
- Тоҷикӣ
- ไทย
- Tagalog
- Türkçe
- Українська
- Oʻzbekcha / ўзбекча
- Tiếng Việt
- 閩南語 / Bân-lâm-gí
- 粵語
- 中文
Tools
Actions
General
Print/export
In other projects
Appearance
From Simple English Wikipedia, the free encyclopedia
Regression analysis is a field of statistics. It is a tool to show the relationship between the inputs and the outputs of a system. Regression analysis is often used for prediction of trends. It is also used for studying whether one thing causes another.
The first type of regression analysis was linear regression. The method of least squares was first published by Legendre in 1805[1] and in 1809 by Gauss.[2] Both used the method to predict the movement of planets around the sun. Gauss published an improved method in 1821.
Related pages
[change | change source]References
[change | change source]- ↑ A.M. Legendre. Nouvelles méthodes pour la détermination des orbites des comètes (1805). “Sur la Méthode des moindres quarrés” is an appendix.
- ↑ C.F. Gauß. Theoria Motus Corporum Coelestium in Sectionibus Conicis Solem Ambientum. (1809)
Machine learning evaluation metrics | |
|---|---|
| Regression | |
| Classification | |
| Clustering | |
| Ranking | |
| Computer Vision | |
| NLP | |
| Deep Learning Related Metrics | |
| Recommender system | |
| Similarity | |
Hidden category: