• Study Resource
  • Explore
    • Arts & Humanities
    • Business
    • Engineering & Technology
    • Foreign Language
    • History
    • Math
    • Science
    • Social Science

    Top subcategories

    • Advanced Math
    • Algebra
    • Basic Math
    • Calculus
    • Geometry
    • Linear Algebra
    • Pre-Algebra
    • Pre-Calculus
    • Statistics And Probability
    • Trigonometry
    • other →

    Top subcategories

    • Astronomy
    • Astrophysics
    • Biology
    • Chemistry
    • Earth Science
    • Environmental Science
    • Health Science
    • Physics
    • other →

    Top subcategories

    • Anthropology
    • Law
    • Political Science
    • Psychology
    • Sociology
    • other →

    Top subcategories

    • Accounting
    • Economics
    • Finance
    • Management
    • other →

    Top subcategories

    • Aerospace Engineering
    • Bioengineering
    • Chemical Engineering
    • Civil Engineering
    • Computer Science
    • Electrical Engineering
    • Industrial Engineering
    • Mechanical Engineering
    • Web Design
    • other →

    Top subcategories

    • Architecture
    • Communications
    • English
    • Gender Studies
    • Music
    • Performing Arts
    • Philosophy
    • Religious Studies
    • Writing
    • other →

    Top subcategories

    • Ancient History
    • European History
    • US History
    • World History
    • other →

    Top subcategories

    • Croatian
    • Czech
    • Finnish
    • Greek
    • Hindi
    • Japanese
    • Korean
    • Persian
    • Swedish
    • Turkish
    • other →
 
Profile Documents Logout
Upload
1 Notes on Feige`s gumball machines problem
1 Notes on Feige`s gumball machines problem

Document
Document

EM Algorithm
EM Algorithm

Recursive Noisy
Recursive Noisy

Descriptive Statistics - Home | University of Pittsburgh
Descriptive Statistics - Home | University of Pittsburgh

Functions Revisited
Functions Revisited

7.3 Functions of Several Variables Tools to learn
7.3 Functions of Several Variables Tools to learn

The Elements of Statistical Learning
The Elements of Statistical Learning

No Slide Title
No Slide Title

Section 8.1 - Cabarrus County Schools / District Homepage
Section 8.1 - Cabarrus County Schools / District Homepage

Binary Variables (1) Binary Variables (2) Binomial Distribution
Binary Variables (1) Binary Variables (2) Binomial Distribution

... from the binominal distribution, where the RV assumes two outcomes, the RV for multi-nominal distribution can assume k (k>2) possible outcomes. Let N be the total number of independent trials, mi, i=1,2, ..k, be the number of times outcome i appears. Then, performing N independent trials, the probab ...
MSc. Econ: MATHEMATICAL STATISTICS, 1996 The Moment
MSc. Econ: MATHEMATICAL STATISTICS, 1996 The Moment

slides-chapter2
slides-chapter2

FORM - UF MAE
FORM - UF MAE

MATH 1890 Finite Mathematics (4 Cr. Hr.)
MATH 1890 Finite Mathematics (4 Cr. Hr.)

Ann. of Math. (2) 52, (1950). 140–147 Let B be a linear manifold in
Ann. of Math. (2) 52, (1950). 140–147 Let B be a linear manifold in

Key Concept: Function
Key Concept: Function

Negative Binomial Distribution
Negative Binomial Distribution

Stat
Stat

Lectures 9 and 10
Lectures 9 and 10

Statistical Inference I HW1 Semester II 2017 Due: February 24th
Statistical Inference I HW1 Semester II 2017 Due: February 24th

Exam Tips File
Exam Tips File

... 28. Residual plot that is scattered supports a linear model. 29. Normal probability plot that supports normality is linear. 30. Binomial distribution formula, necessary characteristics to use 31. Geometric distribution/other discrete probability distributions 32. Central Limit Theorem. 33. All hypot ...
Truck Problem
Truck Problem

61solutions5
61solutions5

NJDOE MODEL CURRICULUM PROJECT CONTENT AREA
NJDOE MODEL CURRICULUM PROJECT CONTENT AREA

< 1 ... 67 68 69 70 71 72 73 74 75 >

Generalized linear model

In statistics, the generalized linear model (GLM) is a flexible generalization of ordinary linear regression that allows for response variables that have error distribution models other than a normal distribution. The GLM generalizes linear regression by allowing the linear model to be related to the response variable via a link function and by allowing the magnitude of the variance of each measurement to be a function of its predicted value.Generalized linear models were formulated by John Nelder and Robert Wedderburn as a way of unifying various other statistical models, including linear regression, logistic regression and Poisson regression. They proposed an iteratively reweighted least squares method for maximum likelihood estimation of the model parameters. Maximum-likelihood estimation remains popular and is the default method on many statistical computing packages. Other approaches, including Bayesian approaches and least squares fits to variance stabilized responses, have been developed.
  • studyres.com © 2025
  • DMCA
  • Privacy
  • Terms
  • Report