In statistics, maximum-likelihood estimation (MLE) is a method of estimating the parameters of a statistical model.

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I would like to know if it's possible to estimate integer parameters using the mle() function in R?

I would like to know if it's possible to estimate both integer and numeric parameters simultaneously using the mle() function in R?
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MLE of Cauchy distribution in R [migrated]

I am trying to compute the following "approximate Maximum Likelihood Estimate" in R. I am a little lost as to how to do this though: any hints would be appreciated, thanks
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19 views

Error with custom density function definition for mle2 formula call

I want to define my own density function to be used in the formula call to mle2 from R's bbmle package. The parameters of the model are estimated but I cannot apply functions like residuals or predict ...
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1answer
44 views

Maximum likelihood estimates MATLAB

Hi i would like to make a MLE estimate of my parameters using the built in functions in matlab. Here is what matlab says: phat = mle(data,'distribution',dist) I don't know how to use the vector ...
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39 views

How to get around flat likelihood function when calibrating GBM parameters

I want to calibrate jointly the drift mu and volatility sigma of a geometric brownian motion, log(S_t) = log(S_{t-1}) + (mu - 0.5*sigma^2)*Deltat + sigma*sqrt(Deltat)*Z_t where Z_t is a standard ...
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1answer
50 views

Maximum likelihood in R with mle and fitdistr

I have a problem with maximum likelihood in R, that I hope you can help me with. In the code Nt stands for observed claims counts and vt for corresponding volumes. First I assume a Poisson dist. so ...
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33 views

What is the algorithim of working with GARCH(1,1) if I need to apply this on a past set of data

Hi I am working with R and have already loaded the rGarch library. I have followed the following steps: 1) I have a set of financial data for a national index which I have uploaded in a dataframe. 2) ...
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1answer
53 views

scipy fmin operands could not be broadcast together with shapes

i'm trying to learn about optimization in Python so i've written some code to test out the fmin function. However i keep receiving the following error: ValueError: operands could not be broadcast ...
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140 views

Calculation of return levels based on a GPD in different R packages

I am performing an extreme value analysis for meteorological data, to be precise for precipitation data available in mm/d. I am using a threshold excess approach for estimating the parameters of a ...
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1answer
77 views

Error: “initial value in 'vmmin' is not finite” not in mle2() but in confint()

I know the web is plastered with questions (and answers) about the 'initial value in vmmim is not finite' error when trying to fit parameters for an mle2 object. I do not have this error when creating ...
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1answer
40 views

Maximum Likelihood Parameter Estimation

Given this dataset: Color | Size Red | Big White | Small Red | Big Red | Small White | Big Red | Big and the following bayesian network: Color --> Size, I am supposed to find the ...
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2answers
111 views

Minimizing the negative log likelihood: Error in optim() caused by the initial values

I want to obtain the maximum likelihood parameters (MLE) for a cumulative normal curve fitted to some proportion data by direct minimization of the negative log likelihood (without using glm). For ...
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1answer
40 views

understanding R's mle2 function and its parameters

I apologize if this question is dumb as all get out. I want to leverage R's mle2() function to find optimum parameters to a particular statistical function; I presume it does so using gradient ...
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29 views

MLE for given log-likelihood function applied to large dataset

I'm sorry if any of this is really easy or obvious, but I am VERY new to R and am in desperate need of help. I have a given dataset ins_adj and a given function for the log-likelihood estimate: = ...
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40 views

Why returns subset() in mle2 an error whilst subsetting manually works

Update: for a minimal example scroll down (does not reproduce the same error but different results) a word of caution before my actual question: I am quite new to R so I hope I make sense. I have ...
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142 views

How to calculate confidence band from mle2 object?

What is the best way of plotting a confidence band from an mle2 object in R? The typical predict(object, interval = 'confidence') as you can use with lm objects doesn't seem to work for mle2 objects. ...
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56 views

How to write a GARCH(1,1) model using “lm” function?

I want to estimate GARCH(1,1) parameters using 'lm' function in R. To check if I am write I compare my estimates with estimates calculated using 'garch' function. I know that MLE estimates are not ...
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13 views

Estimating conditional probability using MLE

I need to estimate conditional probability (or odds of something) using MLE, but I have no clue what exactly should be implemented, I mean what exactly the parameters are to be estimated here. Any ...
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1answer
29 views

Creating R functions, not sure of number of parameters

I'm trying to write a demo program to perform a maximum likelihood estimation somewhat manually in R. To do so, I've created a function that calculates the residuals R from a linear model such that R ...
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46 views

Passing function parameters to mle() for log likelihood

I'm estimating a logit regression with multiple predictor variables by hand in R using the mle() method. I'm having trouble passing along the additional arguments needed to calculate log likelihood in ...
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17 views

MLE estimation with covariates

I'm having a problem when I try to write a log-likelihood function with covariates, apparently there is an unexpected symbol in the function, but I can not find it. I'm scanning my data with ...
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35 views

Instrumenting a probit model using a Tobit estimation in Stata

I can't figure out how to do this: I'm estimating a probit model where one of the variables appears to be endogenous. Then, I have to instrument that variable but it is censored to the left in zero, ...
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139 views

hand-rolled R code for Poisson MLE

I'm attempting to write my own function to understand how the Poisson distribution behaves within a Maximum Likelihood Estimation framework (as it applies to GLM). I'm familiar with R's handy glm ...
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what is hidden(unobserved) data ? and what is hidden data in GMM?

I am studying EM algorithm and GMM together Actually, I can't get it well about the EM algorithm in Wiki The EM algorithm is used to find the maximum likelihood parameters of a statistical model in ...
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2answers
189 views

Errors running Maximum Likelihood Estimation on a three parameter Weibull cdf

I am working with the cumulative emergence of flies over time (taken at irregular intervals) over many summers (though first I am just trying to make one year work). The cumulative emergence follows a ...
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1answer
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MLE error in R: initial value in 'vmmin' is not finite

Suppose I have 2 data.frame objects: df1 <- data.frame(x = 1:100) df1$y <- 20 + 0.3 * df1$x + rnorm(100) df2 <- data.frame(x = 1:200000) df2$y <- 20 + 0.3 * df2$x + rnorm(200000) I want ...
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R: The standard errors are not reasonable when using mle together with pnorm

The values in vector a are seen as the true values and I want to estimate them using mle. I make 100 "disturbed" vectors from a by adding noise, N(0,sigma^2). For every disturbed vector I sort them in ...
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153 views

How to find the maximum of a multivariate function in R

I have a joint likelihood that I need to maximize which is determined by about 25 different variables. I was hoping there was a method for finding the combination of variable values that maximized ...
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1answer
120 views

how tboot does static root of trust measurement and will it change PCR 12-PCR 14 values for different linux kernel?

I have installed tboot using this command apt-get install tboot on ubuntu . Actually I am having one doubt regarding tboot and trusted Grub. trusted grub does STRM(static root of trust for ...
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258 views

How to get the 95% confidence interval in R?

I would like to find the 95% CI for the MLE for my parameter in a function but I have no idea how. The given function is a power-law distribution with f(x)=Cx^(-mu), I calculated the MLE for mu ...
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1answer
247 views

How can I deal with this error in the autoregressive model parameter estimation?

I am trying to use the following code for my autoregressive model parametere estimation: ar(file[,1], aic = TRUE, order.max = NULL,method = "mle") Then, I have the results along with the following ...
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395 views

R error: Error in Hessian in OPTIM when trying to estimate using max. likelihood

I'm an R noob which might be reflected in the not so dense code - so please bear. I'm trying to estimate coefficients for a bivariate normal distribution using max. likelihood estimation. I receive ...
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55 views

Fitting a nonlinear function with “missing level” in mle2 (WARNING: ecologist with computer)

I am looking to optimize the fit of a model that describes the amount of litter collected in a network of .5m^2 'litter traps' in a plot of mapped trees of known diameter and species. The ...
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205 views

How to optimize parameters for binomial log-likelihood in python/scipy?

I am converting some R code (not mine) for estimating the parameters of a choice model to Python. My Python version does not converge onto same parameters as the R version for some test data and I am ...
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130 views

Maximum Likelihood Estimation (MLE) in R [error in variables probl]

I am estimating cross-sectional regressions - fragment: lm(rate~liqamih.log+cap.log+F1+F2, data=x) of the R code listed below. F1 and F2 are the coefficients estimates of time series model. In ...
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1answer
279 views

Gaussian mixture modeling with mle2/optim

I have an mle2 model that I've developed here just to demonstrate the problem. I generate values from two separate Gaussian distributions x1 and x2, combine them together to form x=c(x1,x2), and then ...
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3answers
183 views

GUI interfaces for computationally heavy programs [closed]

I'm exploring options for the best way to achieve the following. I have a computationally heavy model built in R (it uses MLE at its core) and I'd like to provide a front end GUI to use this model. ...