Questions tagged [self-study]

A routine exercise designed to test one's knowledge; often from a textbook, course, or test used for a class or self-study. This community's policy is to "provide helpful hints" for such questions rather than complete answers.

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How to tell if an estimator is unbiased? How to find expected value of an estimator?

You come up with a great idea of an estimator for $\beta_1$ in the SLR model which satisfies SLR.1 to SLR.4:$$y_i=\beta_0+\beta_1x_i+u_i$$ Given a sample $\left\{(x_i,y_i),i=1,2,3,\dots,n\right\}$, ...
stats_studentt's user avatar
1 vote
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Conditional Distribution of Multivariate Gaussian given Linear Inequalities

Consider a multivariate Gaussian $Y\sim\mathcal{N}(\mu,\Sigma)$ of dimension $n$. For fixed $c\in\mathbb{R}^n, A\in\mathbb{R}^{m\times n}$ and $c\in\mathbb{R^m}$, what is the conditional distribution ...
user278486's user avatar
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Expected value for a fair die game

You roll a fair die until the cumulative sum rolled so far is a multiple of 3. You get $1 for each roll. What is the expected amount you will get? I started by finding the probability of the game ...
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Convergence of estimated Survival Functions

Q1 part A&B I have so far $$\underset{n\rightarrow\infty} {\lim} \frac{1}{n}\sum_{i=1}^nI(T_i>x)$$ since we are summing an indicator variable we can say it has a Bernoulli distribution with ...
laxfan1212's user avatar
1 vote
2 answers
292 views

Integral pdf is not 1. I don’t know what’s wrong [closed]

I differentiated cdf to find pdf and then integrated it, but the result is not 1. What’s wrong with my calculation? CDF $$F(x)=\begin{cases} 0&x<1\\ \dfrac{x^2-2x+2}{2}&1\le x<2\\ 1&...
Sweetpump's user avatar
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13 views

Equidispersion Property - Why and Where

I've often looked at count data models over the years. And like a lot of statistical models, they can be used/abused in cookbook style. Identify equidispersion -> do X model (Poisson). Identify ...
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Determining the Identifiability of Models

I am completing exercises in the book Mathematical Statistics: Basic Ideas and Selected Topics regarding proving or disproving that a model is identifiable. The problem I am struggling with considers $...
YessuhYessuhYessuh's user avatar
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How is this a permutation test?

I am trying to read a research paper (link) that involves a permutation test. My (limited) understanding of a permutation test is that you get two samples of data, compute a statistic based on both ...
caitlin's user avatar
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Posterior Distribution using a Normal Likelihood and Laplace Prior

I have the working out below but is this correct. I just want the posterior distribution of when mu=0 given x. What I have tried is setting mu=0 after rewriting the first pdf with the summation ...
jjjcjjj893's user avatar
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How can we maintain asymptotic normality with slight change?

If $(X_n-\mu_n)/\sigma_n\rightarrow_{d} N(0,1)$ (i.e., $X_n$ is $AN(\mu_n,\sigma_n^2)$), I want to show the following two statements: (1) $X_n$ is $AN(\bar{\mu}_n, \bar{\sigma}_n^2)$ if and only if $\...
Lei's user avatar
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1 answer
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Newton's method and the Hessian for Softmax Logistic Regression

I'm having some trouble with optimising softmax regression via Newton's method. I'm not sure if the problem is arising with my equations for the Hessian and Gradient or with the code I've written. For ...
oweydd's user avatar
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Expectation of the realized volatility

I was reading Zhang and Wang 2023 and I have some doubts regarding it. The realized Stochastic Volatility Model is expressed as follows: $$\begin{matrix} y_t = \exp \big( \frac{h_t}{2} \big) \...
V013's user avatar
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2 votes
2 answers
156 views

How should I interpret the assumption of the regression?

I read an econometrics book which states one of the basic assumptions of regression is that $$E(u|x) = 0$$ In another book however I see it written that $$E(u_i|x_i) = 0$$ Are these two saying the ...
Stephen Johson's user avatar
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Why is this program not necessarily an MCMC?

In Chapter 1, Handbook of Markov Chain Monte Carlo, Geyer writes Suppose you have a computer program ...
Neuchâtel's user avatar
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Equation for all frequent itemsets

Consider that the database has only three transactions {<a1,a2,...,a100>, <a1,a2,...,a50>, <a1,2,...,a25>}. Suppose min_sup = 2. Give the equation for all frequent itemsets. Also ...
Invisible's user avatar
1 vote
1 answer
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Calculation of Posterior distribution numerically

For calculating posterior probabilities numerically, I did not understand that why is in the following codes they have divided by 0.001 in the denominator to calculate ...
user232597's user avatar
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30 views

Show: scaling transformation $Y_i=D^{-1}(X_i-\bar{X})$ can be written as $Y = HX_{n\times p}D^{-1}$

Show that the scaling transformation $\textbf{y}_i=D^{-1}(\textbf{x}_i-\bar{\textbf{x}})$ can be written as $Y = HX_{n\times p}D^{-1}$ where $H$ is the centering matrix $(I_n-\frac{1}{n}\textbf{11}')$....
zaira's user avatar
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1 answer
101 views

Poisson Regression and Linear Regression give the same error

I'll use the data azdrg112 from COUNT package. The los will be the response variable while ...
Juan's user avatar
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1 vote
0 answers
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Appropriate statistical test with pre\post experiment

This might be very simple so excuse me in advance. I'm trying to test if the difference between five test scores is statistically significant in a pre\post experiment with three different times, as ...
Mark's user avatar
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Two contradicting derivations of the Covariance Matrix for Linear Regression

I am looking to compute the variance covariance matrix for the standard linear regression coefficients $\hat{\beta}$ when: $$Y = X \beta + \epsilon $$ and $\epsilon \sim N(0,\sigma^2)$. I have derived ...
Anonymous Emu's user avatar
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Show that values produced by a random variable form the sample space of a new random variable

The set of values X($\omega_{k}$) of a random variable on $\Omega$ form the points of a new sample space $\Omega_{X}$. Show that $\omega$ is a random variable on $\Omega_{X}$ (i.e. no information has ...
fchwpo's user avatar
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4 votes
3 answers
192 views

Prove that $\mathbb{E}\vert X \vert^{a}<\infty$ iff $\sum\limits_{n=1}^{\infty}n^{a-1}\mathbb{P}(\vert X \vert \geqslant n)<\infty$

Suppose $X$ is a random variable, $a>0$ is a constant. Prove that $\mathbb{E}\vert X \vert^{a}<\infty$ iff $\sum\limits_{n=1}^{\infty}n^{a-1}\mathbb{P}(\vert X \vert \geqslant n)<\infty$. ...
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Orthonormal Basis assumption in PCA derivation [migrated]

I'm doing the Mathematics for Machine Learning course on Coursera (Course 3, Week 4). I am trying to understand the derivation of PCA. Specifically from: $J =\frac{1}{N} \sum_{n=1}^{N}\Vert \sum_{j=M+...
Nitin's user avatar
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Find the conditional PDF of a multivariate normal distribution given a constraint [duplicate]

Problem to solve We have a vector of random variables $\textbf{X}=(X_1,X_2)$ issued from a bivariate normal distribution. In particular, $\mu = \begin{bmatrix} 2 \\ 3 \end{bmatrix}$, $\Sigma = \begin{...
Cairoknox's user avatar
2 votes
1 answer
56 views

Cook's distance for GLM

In Applied Logistic Regression by Hosmer, Lemeshow and Sturdivant (2013), the formula for Cook's distance in a logistic regression is given as, $$\Delta\beta_j = \frac{r_{sj}^2h_j}{1-h_j}$$ where $r_{...
29703461's user avatar
2 votes
1 answer
243 views

Recommendations for study material for mathematical statistics

I am currently preparing for a qualifying exam in mathematical statistics and am looking for good resources for self-study. I have access to old exams which I have been slowly working on; however, I ...
1 vote
1 answer
51 views

maximum likelihood estimator of regression coefficient

Consider the following simple linear regression model: $$ y_i = (-1)^i \cdot \beta_1 + \epsilon_i \quad \text{where} \quad i = 1, \ldots, n $$ here $\epsilon_i$'s are i.i.d. $N(\beta_0, 1) \text{ ...
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Stochastic volatility model- autocorrelation of $\Delta \ln(y_t^2)$

for the following stochastic volatility model : $y_t = exp(\frac{\alpha_t}{2}) \epsilon_t $ where $\epsilon_t \sim NID(0,1) $ $\alpha_{t+1} = \phi \alpha_t + (1-\phi)\mu +\eta_t$ where $\eta_t\sim NID(...
V013's user avatar
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2 votes
1 answer
52 views

The difference of $\sum_{i=1}^{n}X_{i}$ and $\sum_{i=1}^{n}X_{(i)}$

Here is a exercise from *Mathematical Statistics. Jun Shao. Second edition. EX2.20 Let $X_1,..., X_n$ be $i.i.d.$ random variables having the exponential distribution $E(a,\theta)$, $a\in R$, and $\...
Inforz's user avatar
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2 votes
0 answers
58 views

How can I find the unconditional variance of this process?

Let $y_t = \Delta p_t$ denote a time series of asset returns, where $p_t$ are logarithmic prices. $y_t$ is generated by a heteroskedastic MA(1) process \begin{aligned} y_t &= z_t+\theta z_{t-1}, \\...
V013's user avatar
  • 41
1 vote
1 answer
48 views

Predictive Distribution in Gaussian Process for Machine Learning

I am reading Gaussian Process for Machine Learning equation 2.9, where it is deriving the predictive distribution $$p(f_* | \mathbf{x}_*, X, \mathbf{y}) = \int p(f_* | \mathbf{x}_*, \mathbf{w}) p(\...
s20012303's user avatar
3 votes
1 answer
71 views

Let $N(t)$ is a poisson process with rate $\lambda$, $T^* \sim \operatorname{Exp}(\lambda^*)$, find the expectation of $N(\min(t, T^*))$

Currently, my approach is to split $N(\min(t, T^*))$ like the following by the law of total expectation. \begin{align*} &E(N(\min(t,T^*))) = E(N(t \wedge T^*)) \\ = {}&E(N(t\wedge T^*) \...
yuw444's user avatar
  • 133
1 vote
1 answer
38 views

Probability generating function [closed]

X and Y are independent random variables having poisson distribution with parameters a and b respectively. By using probability generating function, prove that X + Y have a poisson distribution and ...
user394984's user avatar
0 votes
0 answers
27 views

How to calculate lambdas from Bivariate Poisson distribution?

I have three random variables X1, X2, X3 which follow independent Poisson distributions with parameters λ1, λ2, λ3 >0 and then the random variables X = X1 + X3 and Y = X2 + X3 jointly follow a ...
Juan's user avatar
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0 answers
16 views

How to determine significance for a Corrado rank test in an event study?

I apologise if this is a stupid question (it feels stupid tbh). I am currently doing an event study and my abnormal returns are not normally distributed. I am now in the process of performing a ...
jimmyM5555's user avatar
3 votes
1 answer
52 views

Simulating iid mean zero Matérn processes

I'm currently learning FDA (functional data analysis), following "Introduction to Functional Data Analysis" by Kokoszka & Reimherr. Here it is exercice 1.5: 1.5 The Matérn covariance ...
eloi navarro diaz's user avatar
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0 answers
27 views

Generalized likelihood ratio test for a left-truncated exponential distribution [duplicate]

I am doing self study in statistical inference and am rather confused about how to approach generalized likelihood ratio test (GLRT) problems. I am trying the traditional approach by definition and ...
392781's user avatar
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0 answers
22 views

Prove second derivative of loglikelihood is Fisher information [duplicate]

Problem Prove below equation , fisher information come from negative of second derivative of likelihood. $$\begin{align*} \mathcal{I}(\theta) = \mathbb{E}_{x\sim p(y;\theta)}\left[-\nabla^2_{\theta'} \...
Yiffany's user avatar
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1 vote
0 answers
26 views

Wald Test on two exponential samples

Based on independent samples of data $X_i \sim$ Expon$(\lambda_1)$, $i = 1, \cdots, n,$ and $Y_j \sim$ Expon$(\lambda_2)$, $j = 1, \cdots, n$ (both samples of the sample size $n$), find the Wald test ...
Eduardo4313's user avatar
0 votes
0 answers
32 views

How to prove EM algo convergence?

Original Problem I'm looking at problem-set in cs229 about EM algorithim. As my understanding $\ell_{\text{semi-sup}}(\theta)$ is $$ \ell_{\text{semi-sup}}(\theta) = \sum^m_{i=1} \log \sum_{z^{(i)}} ...
Yiffany's user avatar
  • 135
1 vote
0 answers
75 views

Geometric intuition of kernel trick

I would like to understand better the geometry underlying the Kernel trick with the Gaussian Kernel. In particular my question is: How the Kernel trick can be interpreted geometrically, in particular ...
Thomas's user avatar
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2 votes
2 answers
89 views

If I draw the variable "m" from M~N(0, 1), then draw "x" from N(m, 1), what is the distribution of "X" (not X|M)

Step 1: I draw the observation "m" from M~N(0, 1) (i.e. a Normal distribution with mean 0 and variance 1) Step 2: Then I draw "x" from N(m, 1) (i.e. a Normal distribution centered ...
scugn1zz0's user avatar
  • 185
0 votes
1 answer
24 views

One simple question related to probability equations convertion

Why $$\begin{align*} l(\theta) &= \sum^m_{i=1} \log p(x^{(i)};\theta) \\ &= \sum^m_{i=1} \log \sum_{z(i)} p(x^{(i)},z^{(i)};\theta) \end{align*}$$ Find this equation from cs229-2018 problem-...
Yiffany's user avatar
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0 votes
0 answers
12 views

Time series data [duplicate]

Is the following M4_regular_matrix time series data? I am a bit confused since The rows indicate locations although the columns consist of time. We actually ...
user149054's user avatar
1 vote
1 answer
31 views

Time Series plot in R [closed]

The following R codes produce one graph for time series, while the next chunks of codes produce 8 graphs. Why? ...
user149054's user avatar
17 votes
3 answers
2k views

What is the expected number of children until having the same number of girls and boys?

A couple decides to keep having children until they have the same number of boys and girls, and then stop. Assume they never have twins, that the "trials" are independent with probability 1/...
Dharok544's user avatar
  • 171
0 votes
1 answer
40 views

Assessing model performance [closed]

Suppose there are $n=100000$ locations. At each location,there are observations of dependent variable $Y$ for 30 years. That is, we have time series data and this data have $100000$ rows and $30$ ...
user149054's user avatar
2 votes
1 answer
61 views

Correct notation when proving that $\hat{\beta_1}$ is linear

When reviewing lecture slides for the proof that $\hat{\beta_1}$ is linear in OLS-regression my teacher posted the following on the lecture slides: $$\hat{\beta_1}=\frac{\sum(X_i-\bar{X})Y_i}{\sum(X_i-...
AoMRos's user avatar
  • 23
0 votes
0 answers
42 views

Are innovations $0$ for the first term in a differenced series?

I'm working on an unassessed course problem, Consider a time series consisting of quarterly observations of temperature in a city. The seasonally differenced time series $\{x_t\}$ with $D=1$ is ...
mjc's user avatar
  • 535
0 votes
0 answers
14 views

How to test a MA process with extra terms for invertibility?

I'm working on an unassessed course problem (paraphrased for brevity), Consider the time series model $$y_t=\alpha+\beta t+\epsilon_t$$ where $\epsilon_t$ is a white noise and $\alpha,\beta$ are ...
mjc's user avatar
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