翻訳と辞書
Words near each other
・ Binomial
・ Binomial (polynomial)
・ Binomial approximation
・ Binomial coefficient
・ Binomial differential equation
・ Binomial distribution
・ Binomial heap
・ Binomial identity
・ Binomial inverse theorem
・ Binomial nomenclature
・ Binomial number
・ Binomial options pricing model
・ Binomial pair
・ Binomial proportion confidence interval
・ Binomial QMF
Binomial regression
・ Binomial ring
・ Binomial series
・ Binomial sum variance inequality
・ Binomial test
・ Binomial theorem
・ Binomial transform
・ Binomial type
・ Binomial voting system
・ Binomio de Oro de América
・ Binondo
・ Binondo Church
・ Binos
・ Binospirone
・ Binot Paulmier de Gonneville


Dictionary Lists
翻訳と辞書 辞書検索 [ 開発暫定版 ]
スポンサード リンク

Binomial regression : ウィキペディア英語版
Binomial regression
In statistics, binomial regression is a technique in which the response (often referred to as ''Y'') is the result of a series of Bernoulli trials, or a series of one of two possible disjoint outcomes (traditionally denoted "success" or 1, and "failure" or 0).〔 In binomial regression, the probability of a success is related to explanatory variables: the corresponding concept in ordinary regression is to relate the mean value of the unobserved response to explanatory variables.
Binomial regression models are essentially the same as binary choice models, one type of discrete choice model. The primary difference is in the theoretical motivation: Discrete choice models are motivated using utility theory so as to handle various types of correlated and uncorrelated choices, while binomial regression models are generally described in terms of the generalized linear model, an attempt to generalize various types of linear regression models. As a result, discrete choice models are usually described primarily with a latent variable indicating the "utility" of making a choice, and with randomness introduced through an error variable distributed according to a specific probability distribution. Note that the latent variable itself is not observed, only the actual choice, which is assumed to have been made if the net utility was greater than 0. Binary regression models, however, dispense with both the latent and error variable and assume that the choice itself is a random variable, with a link function that transforms the expected value of the choice variable into a value that is then predicted by the linear predictor. It can be shown that the two are equivalent, at least in the case of binary choice models: the link function corresponds to the quantile function of the distribution of the error variable, and the inverse link function to the cumulative distribution function (CDF) of the error variable. The latent variable has an equivalent if one imagines generating a uniformly distributed number between 0 and 1, subtracting from it the mean (in the form of the linear predictor transformed by the inverse link function), and inverting the sign. One then has a number whose probability of being greater than 0 is the same as the probability of success in the choice variable, and can be thought of as a latent variable indicating whether a 0 or 1 was chosen.
In machine learning, binomial regression is considered a special case of probabilistic classification, and thus a generalization of binary classification.
==Example application==

In one published example of an application of binomial regression,〔Cox & Snell (1981), Example H, p91〕 the details were as follows. The observed outcome variable was whether or not a fault occurred in an industrial process. There were two explanatory variables: the first was a simple two-case factor representing whether or not a modified version of the process was used and the second was an ordinary quantitative variable measuring the purity of the material being supplied for the process.

抄文引用元・出典: フリー百科事典『 ウィキペディア(Wikipedia)
ウィキペディアで「Binomial regression」の詳細全文を読む



スポンサード リンク
翻訳と辞書 : 翻訳のためのインターネットリソース

Copyright(C) kotoba.ne.jp 1997-2016. All Rights Reserved.