Refers to any model where the a random variable is related to one or more random variables by a function that is linear in a finite number of parameters.

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45 views

R linear model summaries, why is one model “better” than the other?

I am attempting to get my head around the summaries of linear models given within R. In other words i am trying to identify when the summary of a model is good or bad. Consider the following two ...
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1answer
50 views

Var(AZ)=A Var(Z) A^T?

I am learning linear models, and I do not understand the following: $\text{Var}(AZ)=A \text{Var}(Z) A^T$ where $A$ is a constant matrix. I want to know the variance $\widehat{\beta}$ in a linear ...
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1answer
37 views

Alternatives to least-Chi-square to fit a straight line,

as stated in the title I am looking for alternative ways to fit my data to a straight line. My current approach is a least Chi-Square Fitting, but the predicted relative errors for the slope exceed ...
3
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0answers
34 views

How to build a model where variance depends on covariate?

I have what I believe is a very simple problem for anyone used to modelling with unequal variances (which I am unfortunately not). I have a dependent variable "totrich" which I want to model as a ...
0
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1answer
40 views

Basic questions concerning the interpretation of results from summary(lm(…~…)) in R [duplicate]

set.seed(11) a = runif (12) b = rep(c(1,2,3),4) summary(lm(a~b))$coeff summary(lm(a~b-1))$coeff What does a p.value for the intercept means ? What differences ...
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1answer
29 views

ncvTest from R and interpretation

I have done a ncvTest, but I am not really sure how to interpret this properly. I look documentation and examples online but was not able to find anything that clearly explains about ncvTest. Here ...
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0answers
9 views

Dummy variable as side constraint in DEA

What do you think these dummy variables do to the resulting weight values in a BCC/VRS data envelopment analysis? It appears the 1 and -1 relations drive the program to make the weights for the ...
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1answer
65 views

Calculating the linear model with R

I need to calculate the linear model in R, i did the following: summary(model) But what if I wanted to calculate only the first point? A bit stuck with this one... Many thanks! Here is the code ...
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0answers
19 views

Reference Group for dummy coding [migrated]

Is there any way to explicitly specify which group to take as reference group for dummy coding when modeling with lm function in R using categorical variables??
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1answer
35 views

Interpreting regression coefficents when the variables are in proportions

I have the following cross-sectional regression. per capita car ownership = 0.025*per capita college degrees + 0.012*availability of underground(dummy variable) - 0.287 I am having difficulty with ...
7
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1answer
149 views

Conditional expectation of R-squared

Consider the simple linear model: $$\pmb{y}=X'\pmb{\beta}+\epsilon$$ where $\epsilon_i\sim\mathrm{i.i.d.}\;\mathcal{N}(0,\sigma^2)$ and $X\in\mathbb{R}^{n\times p}$, $p\geq2$ and $X$ contains a ...
2
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1answer
69 views

Prediction on mixed effect models: what to do with random effects?

Let's consider this hypothetical dataset: ...
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2answers
60 views

Line of best fit (Linear regression) over vertical line

I want to get a line of the best fit which is a line that passes as close as possible to a set of points defined by coordinates point_i = (X_i, Y_i). When I apply linear regression, I have a special ...
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0answers
31 views

interaction effect of two variables is much higher than each variables' main effect !!! is this justifiable? [duplicate]

I need to do statistical analysis for my thesis. I'm not familiar with statistics, I would be thankful if you help. Is it possible to have high interaction effect, while main effect of each variable ...
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0answers
18 views

Calculating error bars for Excel Linear Regression [duplicate]

I've ben sent a forecast of sales from a consultancy. It uses Excel's LINEST function, taking 4 factors that seem to have affected sales in the past, and used them to make a prediction. How do I go ...
0
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0answers
70 views

Correct structuring of random effects?

I have produced a mixed effects model as follows; lmer(TotalPayoff~Type+Game+PgvnD*Asym+(1|Subject)+(1|Pairing),REML=FALSE,data=table)- each pairing contains 2 subjects and each Subject is ...
3
votes
1answer
68 views

Statistic For The Curvature or Non-Linearity Of Data Set

I'm trying to estimate the curvature/structural complexity of datasets, or the amount by which it is non-linear. The datasets are mostly very linear but with instances of very arbitrarily structured ...
3
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2answers
77 views

Noisy linear relationship: Can the functional form be known?

Let's say I know the relation between x and y is linear yet noisy. Given a noisy (x,y) ...
1
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1answer
147 views

Zero conditional mean assumption

How can I check the zero conditional mean assumption for a multiple linear regression? I read that when the assumption is violated, your model is misspecified. And your estimators are biased. So we ...
4
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1answer
173 views

R, Differences between lm and aov

What does explain the differences in p.values in the following aov and lm ? Is the difference only due to different types of Sum of square calculations ? ...
1
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1answer
107 views

How do I set up a single continuous independent variable for a repeated measures linear model?

I'm doing an education study and I'm trying to see the effect of website usage on quiz scores in a class of college students. There were 30 students in the class and they took 10 weekly quizzes over ...
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0answers
55 views

Strange linearity test for ANCOVA

There is an easy way to test the linearity hypothesis for a simple regression model $y \sim {\cal N}(\alpha+\beta x,\sigma^2)$: calling $H_0$ this model, perform a test against the ANOVA model $H_1$ ...
1
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1answer
103 views

Solved Assumptions of Linear Regression [duplicate]

I am a bit confused with this. Independence - The response variables are independent. I only have a single response variable so OK? Or observations are independent of each other? E.g Auto Correlated ...
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2answers
294 views

Where do the assumptions for linear regression come from?

I'v already known that there are several assumpations when using linear regression model. But I cannot understand why some of them exists. They are: independent errors normal distribution of errors ...
0
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1answer
88 views

Dropping a variable from a multiple linear regression model, causes another to become non-significant [duplicate]

Suppose we have a regression model that measures college Grade Point Averages. The variables that we are using are hsize (the size of the graduating class in ...
0
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1answer
103 views

Regression on means of log-transformed variables

Suppose that I want to study the relationship between two variables $Y$ and $X$ using the linear model $Y \sim X$. Unfortunately, both $Y$ and $X$ are not normally distributed, say they are both ...
2
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1answer
78 views

How to extract/compute leverage and Cook's distances for linear mixed effects models

Does anyone know how to compute (or extract) leverage and Cook's distances for a mer class object (obtained through lme4 ...
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2answers
228 views

How to interpret a positive beta coefficient in linear regression?

Could someone provide a sample interpretation for the following: ...
0
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1answer
37 views

Fitting models in R with time restriction on coefficients

How should I define a model formula in "R", when one (or more) exact linear restrictions binding the coefficients is available. Equation: y = b1*x1 + b2*x1 where y = b1*x1 for t < t1 and y = ...
4
votes
1answer
114 views

Two simple or one complex model, BIC and likelihood

I have a set of data points with a total number of Nt. I know a priori that the data comes from two distinct processes (distributions). I am trying to find the optimal model parameters together with ...
0
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1answer
62 views

Trend in data - determining according to angle between regression line and vertical line?

This question is a little bit referring to this question How to determine trend strength from linear regression slope? but I found a another solution so I am creating new question to confirm my idea. ...
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0answers
104 views

Repeated measures ANOVA: Mauchly's test undefined

I'm doing a two-way between-within ANOVA in SPSS. I have two groups with 9 subjects each (so total = 18), and 24 levels of one repeated measure. I understand why Mauchly's test of Sphericity has no ...
0
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0answers
75 views

Details of Bayesian linear regression

In Bayesian Linear Regression, we have a data set with {$x_{i}$, $t_{i}$} where $x_{i}$ are input vectors and $t_{i}$ are their resulting observations. We want to find a vector $\bf{w}$ in order to ...
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0answers
13 views

Y v level for different additives; how to handle zero level

I want to model the effect of Level (continuous) of different Additives (categorical) on Y (continuous) by fitting a linear model, so my data is going to look like this: ...
0
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1answer
168 views

additive and non-additive(multiplicative) interactions - soft question -

we use models with multiplicative interaction effects when relationship between independent variable and dependent variable are non-additive. My question is, Are all models with multiplicative ...
3
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1answer
110 views

What does intercept actually mean in a simple linear model?

Given y = a + b*x, does "a" represent simply an intercept or mean y? For y = a + b*ln(x), is there a need to interpret the intercept "a?"
0
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0answers
36 views

Linear mixed model estimated means

I am trying to determine how to get SPSS (19.0) to give out estimated means for my interaction. To preface, my analysis has 3 groups (group a, b and c) and each group was measured at 5 time points. We ...
1
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1answer
147 views

To find significant differences between means using repeated measures GLM

I am new in using SPSS and stuck with General Linear Model [which is just linear model] procedure. I have 8 cognition variables like latency, thigmotaxis, spatial, quadrant, nt quadrant, proximity, ...
0
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2answers
82 views

Do we need Overlap/Common Support in case of a parametric regression?

If I want to make a causal statement based on selection on observables. One typically assumes "Common Support" (/"Overlap") - which means that for any value of the confounding variables X a unit i can ...
5
votes
3answers
291 views

Perform linear regression, but force solution to go through some particular data points

I know how to perform a linear regression on a set of points. That is, I know how to fit a polynomial of my choice, to a given data set, (in the LSE sense). However, what I do not know, is how to ...
2
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0answers
73 views

What insights can be found by using leverage plots?

I'm trying to figure out whether leverage plots can provide valuable information. See example in http://www.jmp.com/support/help/Leverage_Plot_Details.shtml
3
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1answer
127 views

Why does the rank of the design matrix X equal the rank of X'X?

Why does the rank of the design matrix $\boldsymbol X$ equal the rank of $\boldsymbol{X'X}$? Is this true in all circumstances? If X is not linearly independent, what would the rank of X'X be?
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0answers
32 views

Estimable function of OLS parameters can be shown by inner product with Null space?

I am in a advanced linear models class, and we are currently covering estimable functions. The criterion that we have for an estimable function is that for any $a^T\beta$ there exists an unbiased ...
2
votes
1answer
103 views

Trend line does not seem to fit data

I'm trying to do a simple scatterplot and trend line in R, but it doesn't look right. Have I messed up something blatantly obvious? Any ideas as to why the line doesn't fit the data? Here is the ...
0
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0answers
47 views

Which models should be compared when using the regression formulation of multi-way ANOVA?

I dithered about whether to post this on Stack Overflow or here, but I think the question is more ideological than practical, so please forgive if there's too much technical detail! I'm trying to ...
2
votes
1answer
108 views

Should I include an interaction term for a covariate if I expect it to be correlated with one or more of the variables?

I'm fitting a linear model where the response variable is a measure of physical performance-- running speed for example-- and the predictor variables are sex and drug treatment, with an interaction ...
1
vote
1answer
44 views

Is there a general rule about max nr of variables to use in (generalized) linear model?

I am running a generalized linear model on a dataset with 19 individuals and have 4 variables of interest. There are furthermore a number of interactions that might be interesting to look at. I was ...
2
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1answer
69 views

Reference needed - Who first introduced linear models, fixed and random effects models?

I am writing an essay which briefly discusses linear models as well as models with fixed and random effects. I am googling since ages to find a reference which says who first introduced linear models ...
5
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2answers
229 views

lm() - model specification

If have multivariate data of 3 response variables and 2 factors (f1 and f2). I can specify an linear model in different ways for this data, however I don't know what the difference between the models ...
3
votes
2answers
158 views

Troublesome residual plot from linear mixed model

I have fitted the following linear mixed model based on the results of an economic game: lmer(TotalScore~perOOgivenP+Game+(1|Subject),REML=T,data=mdl1table)->m1 ...

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