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(ページの作成:「==Self-assessment quizzes== *[https://www.cdc.gov/csels/dsepd/ss1978/index.html CDC Principles of Epidemiology] *[https://www.med.soton.ac.uk/stats_eLearning/quizzes/inde…」)
 
 
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==Self-assessment quizzes==
 
==Self-assessment quizzes==
 
*[https://www.cdc.gov/csels/dsepd/ss1978/index.html CDC Principles of Epidemiology]
 
*[https://www.cdc.gov/csels/dsepd/ss1978/index.html CDC Principles of Epidemiology]
 
*[https://www.med.soton.ac.uk/stats_eLearning/quizzes/index.html Statistics - University of Southampton]
 
*[https://www.med.soton.ac.uk/stats_eLearning/quizzes/index.html Statistics - University of Southampton]
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*[https://collegedunia.com/exams/statistics-mcq-mathematics-articleid-4505]
  
 
==Types of variable==
 
==Types of variable==
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flowchart TB
 
flowchart TB
 
  a[Variable]
 
  a[Variable]
  b[Quantitative<br>Numerical]
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  b[*Quantitative<br>*Numerical]
  c[Categorical<br>Nominal]
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  c[*Categorical<br>*Nominal]
 
  d[Continuous]
 
  d[Continuous]
 
  e[Discrete<br>Integer]
 
  e[Discrete<br>Integer]
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   c --- f & g & h
 
   c --- f & g & h
 
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* *Quantitative/numerical variable is also called as '''covariate''' when it is an explanatory (independent) variable
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* *Categorical/nominal variable is also called as '''factor''' when it is an explanatory (independent) variable
  
 
==Ratio, Rate, Proportion==
 
==Ratio, Rate, Proportion==
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{{#mermaid:
 
{{#mermaid:
 
flowchart TB
 
flowchart TB
  a[Ratio<br> = all fractions] -- ratio of<br>part to whole ---b[Proportion]
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  a[Ratio<br> = all fractions] -- ratio of part to whole ---b[Proportion]
  a -- ratio of<br>quantity in time-scale ---c[Rate]
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  a -- ratio of quantity in time-scale ---c[Rate]
 
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==Probability, Likelihood==
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--> ''see'' [[Data distribution#Probability, Likelihood|'Probability, Likelihood' in 'Data distribution']]
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==Origin of terminology==
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===Why is it called "''Z''"?===
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===Why is it called "''Student's t''"?===
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William Gosset was a mathematician around the 19th to 20th century as well as he worked for the famous brewery Guinness. [https://www.geo.fu-berlin.de/en/v/soga/Basics-of-statistics/Continous-Random-Variables/Students-t-Distribution/index.html He found a new statistical distribution but Guinness did not allow their employees to publish any papers related to their business confidential affairs. Thus Gosset published his achievement under a nickname of ''Student''].
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[https://www.jstor.org/stable/2683058 ''t'' itself was later named through correspondences between Gosset and a statistician R.A. Fisher]. The first description of ''t'' is appeared on [https://digital.library.adelaide.edu.au/dspace/bitstream/2440/15183/1/36.pdf the article by Fisher in 1924].
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===Why is it called "''regression''"?===
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In the 19th century, Sir Francis Galton investigated association between parents' heights and their offspring's heights. He found association between them had some characteristics that the higher the parents were the higher the offspring are but the offspring tended to shorter than their parents, and vise versa. [https://www.biostat.jhsph.edu/courses/bio653/misc/JMPer%20Cable%20Summer%2098%20Why%20is%20it%20called%20Regression.htm He described the association as 'offspring's heights to ''regress'' (go back) towards mediocrity (average)'].
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Since then [https://www.sciencedirect.com/science/article/abs/pii/S0039368120302090 ''regression to the mean''] has expanded to the regression model which provides the estimates of association between one dependent variable and one or more independent variables by a line.
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===Why is it called "''logistic''"?===
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The true reason remains unclear.
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The French mathematician who created this term Pierre-Fran&ccedil;ois Verhulst first described this word "''logistique''" (Fr.) in his literature in 1845, [https://eudml.org/doc/182533 "Recherches mathématiques sur la loi d'accroissement de la population," in NOUVEAUX MÉMOIRES DE L'ACADÉMIE ROYALE DES SCIENCES ET BELLES-LETTRES DE BRUXELLES, vol. 18, p 3].
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In a figure Verhulst described an usual exponential curve as "''logarithmique''", and created a new word  "''logistique''" to describe a distinct curve he created by his formula which is now known as a logistic regression formula, but he didn't note through what derivation he created the word.
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Description of [https://en.wikipedia.org/wiki/Logistic_function#History Logistic function in Wikipedia is here].
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At least, it seems to have nothing to do with a general term "logistics".
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===Why is it called "''bootstrapping''"?===
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''Bootstrap'' is a piece of cloth or leather at the back or the side of a boot that is used to help you pull it on. A broader meaning is also added the word as an approach to creating something with the minimum amount of possible resources.
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There is also an idiom or a template expression of [https://en.wiktionary.org/wiki/pull_oneself_up_by_one%27s_bootstraps ''pull oneself up by one's bootstraps''], which means to improve one's situation on one's own efforts without any other's help.
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The method of bootstrapping is to derive new samples from the original observations with replacement, not from other data source, i.e., pulling samples up from themselves, which implies ''pull oneself up by one's bootstraps''.

2023年12月14日 (木) 16:02時点における最新版

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Self-assessment quizzes

Types of variable

  • *Quantitative/numerical variable is also called as covariate when it is an explanatory (independent) variable
  • *Categorical/nominal variable is also called as factor when it is an explanatory (independent) variable

Ratio, Rate, Proportion

Every fraction is ratio.

Refer to this page too

Probability, Likelihood

--> see 'Probability, Likelihood' in 'Data distribution'

Origin of terminology

Why is it called "Z"?

Why is it called "Student's t"?

William Gosset was a mathematician around the 19th to 20th century as well as he worked for the famous brewery Guinness. He found a new statistical distribution but Guinness did not allow their employees to publish any papers related to their business confidential affairs. Thus Gosset published his achievement under a nickname of Student.

t itself was later named through correspondences between Gosset and a statistician R.A. Fisher. The first description of t is appeared on the article by Fisher in 1924.

Why is it called "regression"?

In the 19th century, Sir Francis Galton investigated association between parents' heights and their offspring's heights. He found association between them had some characteristics that the higher the parents were the higher the offspring are but the offspring tended to shorter than their parents, and vise versa. He described the association as 'offspring's heights to regress (go back) towards mediocrity (average)'.

Since then regression to the mean has expanded to the regression model which provides the estimates of association between one dependent variable and one or more independent variables by a line.

Why is it called "logistic"?

The true reason remains unclear.

The French mathematician who created this term Pierre-François Verhulst first described this word "logistique" (Fr.) in his literature in 1845, "Recherches mathématiques sur la loi d'accroissement de la population," in NOUVEAUX MÉMOIRES DE L'ACADÉMIE ROYALE DES SCIENCES ET BELLES-LETTRES DE BRUXELLES, vol. 18, p 3.

In a figure Verhulst described an usual exponential curve as "logarithmique", and created a new word "logistique" to describe a distinct curve he created by his formula which is now known as a logistic regression formula, but he didn't note through what derivation he created the word.

Description of Logistic function in Wikipedia is here.

At least, it seems to have nothing to do with a general term "logistics".

Why is it called "bootstrapping"?

Bootstrap is a piece of cloth or leather at the back or the side of a boot that is used to help you pull it on. A broader meaning is also added the word as an approach to creating something with the minimum amount of possible resources.

There is also an idiom or a template expression of pull oneself up by one's bootstraps, which means to improve one's situation on one's own efforts without any other's help.

The method of bootstrapping is to derive new samples from the original observations with replacement, not from other data source, i.e., pulling samples up from themselves, which implies pull oneself up by one's bootstraps.