Any statistical process which seeks to approximate an unknown value, such as a distribution, a point estimate (e.g. mean), or confidence interval.

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32 views

Parameters estimation of ODE system

I have all the data and an ODE system of three equations which has 9 unknown coefficients (a1, a2,..., a9). ...
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1answer
43 views

Estimating values of a sequence from observed differences

I have a sequence of random variables $S_1, S_2 \dots S_N$ that is guaranteed to satisfy $$S_1 + S_2 + \cdots + S_N = 0$$ I can't observe any of these random variables directly, however I can ...
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0answers
20 views

Idea of the Nyblom test?

The nyblom-hansen test gives informations about the stability of the estimated parameters in a model. As far as I understand this test, it looks at the score of the ML at evaluates, how near to zero ...
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0answers
14 views

How do I best estimate population parameters from multiple sets of summary statistics on one sample?

Suppose that I have an assortment of summary statistics on a sample, and some beliefs about the underlying distribution, but no access to the sample itself. Each of the sets of summary statistics is ...
2
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2answers
63 views

Difference between “estimated” and “fitted”?

Currently I am using a r package to fit an ARMA-GARCH process. Afterwards, I want to use the fitted values to calculate the Value at Risk. So these values are not the forecasts, but the ...
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0answers
25 views

What coefficient could I use to calculate the relative difficulty of a test in relation to others using only mean and population standard deviation?

I have a series of tests, all of them of different difficulty, and from each of them I get an average score and a population standard deviation; e.g: ...
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0answers
31 views

Bias in EM estimation for a mixture of normal distributions

Are the parameter estimates for a mixture of two normal distribution using EM algorithm biased or unbiased? More specifically, if I use the EM-algorithm to obtain ML estimates of $μ_1$, $μ_2$, ...
2
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1answer
48 views

Borrowing strength

What are the principles of Borrowing Strength? What does it mean in terms of estimating parameters for hierarchical models? Where can this information can be read from?
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2answers
130 views

Exponential family in testing and estimation

In the Annals of Statistics paper "Defining the curvature of a statistical problem(with applications to second order efficiency)" by Bradley Efron, he claims the following two statements in the first ...
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24 views

More suitable cross validation method for estimation method

I have a sparse dataset of graph of size about (7k*7k).I estimate some values for each not existence edge according to the information of graph. I want to validate the method(The accuracy of the ...
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23 views

SV model estimation

I have been trying to estimate the basic stochastic volatility model using OpenBUGS via R and at an stage of the following command. Please can you comment for the command that can give me the ...
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1answer
21 views

Combined Individual Error

This is from my college project management course. Reading through an example question here it says: When estimating in parts, the total error will be less than the sum of the part errors. ...
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1answer
30 views

Estimating the number of birds in a specific area

I want to count the birds in an area. What's the proper statistical method for it? What are the good references for this topic?
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34 views

EM algorithms - confidence interval estimation

Does anybody know how to find the confidence intervals for estimated parameters of a mixture of Gaussians by using EM algorithm?
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1answer
36 views

error in estimation with continuous data (New to Statistics)

Is there a way to correlate error in a fit (MSD) to the error of the a calculation performed with the parameters associated with the fit? My specific problem is dealing with spectroscopic data. I ...
2
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1answer
52 views

how to estimate CTR (ctr-click-through-rate)?

How many times banner should be shown to estimate CTR? For example, a banner was shown x times, and was clicked y times. $$\text{CTR} = \frac{y}{x}$$ How to evaluate incaccuracy of this value?
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1answer
47 views

Cauchy M estimator of regression in R

Was wondering if anyone knows of an R package to estimate the Cauchy-M estimator of regression (see for example the end of this section, but with simultaneous estimation of the scale parameter as in ...
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0answers
21 views

Length of time series and likelihood estimation

In ARMA (with normal errors) model estimation, are there any empirical studies or tests to judge the minimum number of observations (length) of the time series that are required such that OLS is an ...
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1answer
27 views

Relation between minimum contrast estimate and minimum distance estimate?

What relation are between minimum contrast estimate and minimum distance estimate? If I understand correctly, these two are different methods? or are they equivalent? Thanks and regards! Minimum ...
2
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1answer
63 views

Under what conditions do Bayesian and frequentist point estimators coincide?

With a flat prior, the ML (frequentist -- maximum likelihood) and the MAP (Bayesian -- maximum a posteriori) estimators coincide. More generally, however, I'm talking about point estimators derived ...
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24 views

What if the MVUE depends on the parameter?

The minimum variance, unbiased estimator $\hat \theta$ of $\theta$ is defined by $$\hat \theta = \text{argmin}_{\hat \theta} \; \mathbb{E} \left( (\hat \theta - \theta)^2 \, | \, \theta\right), \quad ...
3
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1answer
49 views

Will two estimators converge to the same answer?

Say I have two estimators for the same quantity and using the same model, $E[f(X)]$. I also know that these two estimators are consistent, meaning, if we have a lot of data, they will be close to the ...
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1answer
43 views

Transforming the distance value from a center, to a probability value

Let $c_i$ be the center of a micro-cluster (i.e. we have many centers representing some fragments of clusters). Let $c_1$ be the center which is the closest to a new data-point $x$, such that ...
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0answers
18 views

Shrinkage estimator's risk function

How do you compute the risk function under squared loss of an estimator of the form $\begin{align*} \hat{\mu}(x) &= \bar{x} + \left(1-\frac{k}{||x-\bar{x}||_2^2}\right)(x - \bar{x}) \end{align*}$ ...
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11 views

How to choose grid for SMM and report results?

In estimating a model with two variables by simulated method of moments. How does one generally choose the number of points on the grids? For example, consider one variable as interest rate between 0% ...
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0answers
20 views

Robust mean estimation with O(1) update efficiency

I am looking for a robust estimation of the mean that has a specific property. I have a set of elements for which I want to calculate this statistic. Then, I add new elements one at a time, and for ...
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0answers
37 views

Estimating right-censored data

I am VERY new to stats. I have a large amount of life-time data (delay in arrival since start of experiment) from repeat experiments. Some data is missing, but essentially represents a delay longer ...
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14 views

Parzen Estimation used in Classification

How would I use a Parzen window estimate to classify an arbitrary test point x using 3 dimensional data from three categories.
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1answer
51 views

Given MCMC samples, what are the options for estimating posterior of parameters?

Markov chain Monte Carlo (MCMC) is a class of algorithms for sampling from probability distributions. In the end, given a parametric model explaining the data, MCMC could also be used for parameter ...
2
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1answer
32 views

Estimating point of phase transition

I have stochastic simulations that depend on a parameter $k$. As I vary $k$ the quantities I track vary gradually and then suddenly transition to very different values and continue to vary gradually ...
3
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1answer
89 views

What is an unbiased estimate of population R-square?

I am interested in getting an unbiased estimate of $R^2$ in a multiple linear regression. On reflection, I can think of two different values that an unbiased estimate of $R^2$ might be trying to ...
2
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1answer
105 views

What technical language to describe the degree to which probabilities are likely to be modified by future data?

I'm trying to reason about something I call "estimate stability," and I'm hoping you can tell me whether there’s some relevant technical language, so that I can learn about it and then write a ...
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1answer
106 views

Standard errors of hyperbFit?

I want to fit a hyperbolid distribution according to my notation: \begin{align*} H(l;\alpha,\beta,\mu,\delta)&=\frac{\sqrt{\alpha^2-\beta^2}}{2\alpha \delta K_1 (\delta\sqrt{\alpha^2-\beta^2})} ...
2
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0answers
49 views

Estimator bias without a closed form?

Given a regression loss function $l(Z,\beta)=||Y-Z\beta||_2 + \lambda \beta^TD\beta + r(X,Z)$ where $X$ is the predictor matrix, I would like to estimate a $Z$ that minimizes the above loss in a ...
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1answer
84 views

Jointly estimation of model or single step estimation?

I have financial data (return) and use the following model: where $R_t$ is the return at time t, $\mu$ is set to zero, $\sigma$ is the volatility and $\epsilon$ is an innovation process. The ...
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1answer
27 views

Output of hyperbfit?

I want to fit a hyperbolid distribution to my data, in my notation, I have the density \begin{align*} H(l;\alpha,\beta,\mu,\delta)&=\frac{\sqrt{\alpha^2-\beta^2}}{2\alpha \delta K_1 ...
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0answers
19 views

Is it possible to Reduce/Correct Bias through EM algorithm?

I am dealing with few overdispersed count models and using mixed Poisson distributions to deal with overdispsered data. I've used MLE technique to estimate the paramters, however ML estimates are ...
0
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1answer
39 views

Why does KL divergence show up in the proof of Hoeffding's inequality?

In some textbook the KL divergence shows up in the proof of Hoeffding's inequality (e.g., eq. (5) of this material). In contrary, most other textbooks seem not mention this fact. I know that KL ...
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0answers
20 views

Why Hoeffding's inequality has a sharper bound than Markov's inequality?

Basically, I can understand the proofs' details for both inequalities, but still I have no idea why the bound of Hoeffding is sharper than that of Markov? Is there any underlying intuitive that can be ...
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0answers
23 views

How can you reconstruct “base” (profile/headshot) image of face using several obscured images of the face?

I recently read a paper titled "3D Face Reconstruction from a Single Image using a Single Reference Face Shape" which got me thinking about the fact that it is rare for one to encounter unobscured ...
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1answer
89 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 ...
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2answers
46 views

If the empirical distribution of a sample is same as the true distribution, how shall the deviation be estimated?

Suppose we can always generate a sample $\{X_1, \dots, X_n\}$ of size $n$ for a discrete distribution, such that its empirical pmf is the same as the true pmf. One of the reason that we can have such ...
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1answer
67 views

Gaussian vs non-gaussian distribution

Let we have data of 3D (example angular velocity x, angular velocity y, angular velocity z).Can anyone explain/give example/how to differentiate between gaussian distribution and non-gaussian ...
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0answers
51 views

Pooling asymmetric confidence intervals for proportions?

I have several measurements of proportions (values in [0, 1]) $\theta_1,...,\theta_n$, each with an (asymmetric) 95% confidence interval. The $\theta$'s are repeated measurements of the same variable ...
1
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1answer
21 views

minimax and transformations

for two real random $n$-vector $y$ and $x$ and a random $n$-vector $e$ with distribution $F$ independent of $x$ we know (1) that the estimator $$\text{med}\left( \frac{y_i}{x_i}\right)$$ is ...
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1answer
86 views

Nelson-Aalen estimator and interval censoring/tied events

I just noticed that the Nelson-Aalen estimate of the cumulative hazard changes depends on the existence of tied events. As a toy example, consider a study with 3 patients. The patients die on day 1, ...
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1answer
91 views

t distribution method of moments

This is a further question to my original question, where I did not get an helpful answer (at leas not helpful for me) :Methods of moments for t distribution I want to fit a t distribution to my data ...
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1answer
56 views

Creating a CI for the mean from an approximation of x-bar

The "classical" $100(1-\alpha)\%$-confidence interval starts from the Student's t statistic $$t=\frac{\bar{x}-\mu}{s/\sqrt{n}}.$$ Then, one obtains the desired result, e.g. $\bar{x}\pm ...
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21 views

Ideas and issues related to parameter estimation

MPSV paper describes the method of parameter estimation. I have a set of measurements obtained from hardware. It is a vector of 1000 data samples representing a measurement.I need to formulate a model ...
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1answer
163 views

Why must an estimator be independent from the parameter?

This is an excerpt from "Modern mathematical statistics with applications" by Devore et al. What puzzles me is that the estimator cannot help being dependent on $\theta$, since the sample depends on ...

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