Week 9 Linear Regression Flashcards

1
Q

Name the 2 types of relationships in linear regression

A
  1. Deterministic (or functional) relationship
  2. Statistical relationship
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2
Q

The relationship between Celsius and Fahrenheit would be described as a ___________ relationship

A

Deterministic (or functional)

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3
Q

The relationship between Celsius and Fahrenheit would be described as a ___________ relationship

A

Deterministic (or functional)

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4
Q

If you graph a deterministic relationship, where will the relationships line fall?

A

Directly on the data points

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5
Q

The relationship between height and weight would be described as a _________ relationship

A

Statistical

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6
Q

Name this relationship: Alcohol consumed and blood alcohol content

A

Statistical

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7
Q

Name this relationship: Speed and gas mileage

A

Statistical (As speed increases you would expect gas mileage to decrease)

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8
Q

Name this relationship: Speed and gas mileage

A

Statistical (As speed increases you would expect gas mileage to decrease)

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8
Q

In this relationship, the equation exactly describes the relationship between the two variables

A

Deterministic

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9
Q

When do you use Regression?

A

When you have a series of continuous data that follows some sort of pattern

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10
Q

Regression determines the _______ of the ____________ between the dependent variable and a series of other variables (known as ___________ variables)

A

strength of the relationship, independent

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11
Q

Name this type of regression: ALlows us to summarize and study relationships between two continuous variables

A

Simple linear

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12
Q

In simple linear regression we have one variable denoted as x, which is the ________ variable, and a variable denoted as y, which is the ________ variable

A

independent, dependent

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13
Q

This variable is known as the predictor

A

independent variable

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14
Q

This variable is known as the response

A

dependent variable

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15
Q

For a single line, Linear regression uses these parameters

h(x) = Θ0 + Θ1 x

What is this the equivalent of?

A

y = mx + b

16
Q

Name this: A single line that is the best-fit line to a data set. The line is then used to predict real values for continuous output

A

Linear regression with one variable

17
Q

What else is linear regression with one variable called?

A

Univariate linear regression

18
Q

How are the best Θ0 and Θ1 values chosen for linear regression?

A

They chosen using a cost function

19
Q

How does a cost function work?

A

The total error is calculated between the predicted values and actual values.

We continue to change the values until we find the minimum error.

20
Q

A line that fits the data “best” will be the one with the

A

minimum amount of prediction errors

21
Q

What we use to find the overall prediction error?

A

the least squares criterion

22
Q

To measure accuracy we can calculate the “Coefficient of determination”, which is also called the residual or r^2

What does r represent?

A

The correlation coefficient

23
Q

What is the range of r^2?

A

It’s a number between 0 and 1

24
Q

What does it mean if r^2 is higher? What does it mean if it’s lower?

A

The closer to 1, the closer the data is to the line. The closer to 0, the further the data is from the line

25
Q

In a multiple regression model, what does each number mean next to the variable?

A

The strength/type of relationships each variable has with the class variable.

Type = whether it’s positive or negative

26
Q

Is multivariate regression the same as multiple regression? How?

A

No.

Multivariate = multiple dependent variables, possible multiple independent variables

Multiple regression = single dependent variable, multiple independent variables

27
Q

Name this: Models a relationship between independent (predictor) variables and a categorical response variable

Through this we can estimate the probability of falling into a certain level of the categorical response, given a set of predictors

A

Logistic regression