Bayesian refers to methods in probability and statistics named after Thomas Bayes (ca. 1702–1761), in particular methods related to statistical inference

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Inference in a Bayesian Network

I need to perform some inferences on a Bayesian network, such as the example I have created below. I was looking at doing something like something like this to solve an inference such as P(F| A = ...
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Bayseian +Pymc. How to call a integration while defining a model in pymc

I am new to pymc . I am having difficulties in defining the model in my code. Model involve a integration over step length . I am confused because I don't know if I can define a function as ...
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Optimization error for pymc3

I'm trying to create a relatively simple hierarchical bayesian model using pymc3. I keep getting an error, however. The code is: import numpy as np import pymc3 as pm # Example data. ncond = 4 ...
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How can I add a random effect to this stan model?

I have a model for estimating the intraclass correlation (rho parameter below) from N_items of observations on N_subjects. There is a fixed effect for each item (mean vector mu), but I want to also ...
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Estimation of a Probit model via data augmentation using JAGS

I'm trying to estimate a Probit model with data augmentation. This works without data augmentation, but the end goal is to estimate a multinomial Probit model, where data augmentation is helpful. ...
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JAGS Runtime Error: Cannot insert node into X[ ]. Dimension Mismatch

I'm trying to add a bit of code to a data-augmentation capture-recapture model and am coming up with some errors I haven't encountered before. In short, I want to estimate a series of survivorship ...
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34 views

Number of parameters in MCMC

I want to sample from my posterior distribution using the pymc package. I am wondering if there is a limit on the number of dimensions such algorithm can handle. My log likelihood is the sum of 3 ...
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85 views

Neural Nets with Pymc3

I am trying to use pymc3 to sample from the posterior, a set of single-hidden layer neural nets so that I could then convert the model to a hierarchical one, same as in Radford M.Neal's thesis. ...
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63 views

Why does pymc with gamma prior not converge with zero count data?

I am relatively new to pymc and have run into what seems like a convergence problem. I am modelling some specific Poisson process with a Gamma prior. I have some global data that I use as a basis for ...
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30 views

WinBUGS/JAGS code for calculating Bayesian p-value from ZINB model

I have a working zero-inflated negative binomial model written in BUGS code, but am having trouble figuring out the appropriate Bayesian p-value code to test goodness of fit. Any appropriate ...
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PyMC: Taking advantage of sparse model structure in Adaptive Metropolis MCMC

I have a model that is structured as in this diagram: I have a population of several people (indexed 1...5 in this picture). Population parameters (A and B, but there can be more) determine the ...
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Modified BPMF in PyMC3 using `LKJCorr` priors: PositiveDefiniteError using `NUTS`

I previously implemented the original Bayesian Probabilistic Matrix Factorization (BPMF) model in pymc3. See my previous question for reference, data source, and problem setup. Per the answer to that ...
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Bayesian Covariance Prediction with PyMC

I'm trying to use pyMC to provide a Bayesian estimate of a covariance matrix given some data. I'm roughly following the stock covariance example provided in this online guide (link here), but I have a ...
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64 views

Bayesian Probabilistic Matrix Factorization (BPMF) with PyMC3: PositiveDefiniteError using `NUTS`

I've implemented the Bayesian Probabilistic Matrix Factorization algorithm using pymc3 in Python. I also implemented it's precursor, Probabilistic Matrix Factorization (PMF). See my previous question ...
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18 views

What's the bayesian assumptions about quick sort?

I am reading this article about entropy, but I could not understand the calculation of the probability the second is higher(assuming the first one is higher than the pivot element) is 2/3. I could not ...
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23 views

Winbugs “array index is greater than upper bound”

I am doing a linear regression in Winbugs and am consistently getting the error "array index is greater than upper bound for Y". I can't figure out where my error is. Thank you. model{ for(i in 1:n){ ...
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Wishart distribution to estimate covariance matrix in PyMC

I am trying to estimate a covariance matrix using PyMC (not PyMC3). My work is based on this and this question. I don't get a good approximation using the code in those questions. So I am trying to ...
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What strategies should be used for social network text post classification?

In looking at ways to categorize text posts in my social network app. For example, two posts might look like: Try out my Recipe of the Day: Honey Lemon Cake 2 cups flour 3 cups water 1/2 cup honey 3 ...
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bayesian structural time series - estimate state space model with bsts package

I have a question about the interpretation of some outputs of the CausalImpact package. This package uses the bayesian structural time series package bsts, which estimates a state space model using ...
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Rstan code for simple multivariate linear model

I'm trying to use Rstan to fit an example model from Christensen, Johnson, Branscum, and Hanson's Bayesian Ideas and Data Analysis: An Introduction for Scientists and Statisticians. The authors use ...
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Normalizing constant for beta distribution with discrete prior : R code query

I am currently going through Bayesian Thinking with R by Jim Albert. I have a query about his code for his example with a beta likelihood and discrete prior. His code for calculating the posterior is: ...
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25 views

Comparison between Random Forest an Bayesian Classifier

I want to implement a language classifier like Linguist in Github:- http://www.github.com/github/linguist I don't know if Random forest is better than Bayesian in terms of complexity. There would be ...
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Binary decision, evaluating Bayesian probit regression?

I have the following task: I need to compare full Bayesian probit regression using MCMC sampling and Laplacian logistic regression. I have a training set of data and an evaluation set. The response is ...
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Marginal Probability for bayesian network

I am working with the Bnlearn package. I have a data frame of 54 observations and 91 variables, and I want to find the marginal probability for each row of the data frame. Could any one help me? ...
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31 views

How to label observations based on latent class analysis

I perform a latent class analysis to a dataset of binary variables with library("BayesLCA") data("Alzheimer") alz <- data.blca(Alzheimer) sj3.em <- blca.em(alz, 3) Now I want to label my ...
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Normalizing Bayesian IRT Model in pymc

The best example I could find of how to estimate this type of IRT Bayesian model using MCMC in Python was this example. Below is a reproducible version of the code that I got to run. My understanding ...
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Bayesian IRT Model in Python using pymc

I would like to estimate an Item Response Theory (IRT) model in Python. More specifically, take the canonical IRT example of students taking an exam. For each student we observe whether or not they ...
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How to specify to rjags to run hierarchical model with multiple conditions

I'm trying to run a Bayesian regression model using rjags, and my data have 4 relevant conditions. The model runs fine when collapsing across conditions, however I don't understand where/how to ...
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53 views

A suitable scoring algorithm for 3 scores

I have several objects, each object should be rated by [q]Quality, [v]Value and [s]Suitability by a user. Currently I am retrieving the total average of each object by Score = (q+v+s/3) - That said I ...
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38 views

Multiple Coins from Single Mint Example in PyMC

Trying to learn PyMC by transferring some of the models from the book "Doing Bayesian Data Analysis" (Kruschke). One basic example (from Ch. 9) is to assume a set of coins is distributed according to ...
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R BACE error with BMS package: leading minor is not positive definite

I am trying to perform Bayeasian Avareging via BMS Package in R but I am constantly getting error message "Error in chol.default(symmat) : the leading minor of order X is not positive definite" I ...
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69 views

ValueError: operands could not be broadcast together with shapes (20,2) (20,)

I am building a Bayesian Ridge Regression using sklearn on the Parkinson's Telemonitoring Data Set. This is the code: import math import pandas as pd import numpy as np from sklearn.linear_model ...
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r - Sampling from a grid of probabilities (Bayesian posterior approximation)

I am doing a Bayesian analysis, and I am trying to estimate two parameters. To approximate the posterior distribution, I have constructed a fine grid and computed the posterior probability for each ...
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multiple definition of node xi1[1,1]

i have a problem in the code below the problem is occured in compiling process " multiple definition of node xi1[1,1]", anyone help me to solve this problem please. many thanks in advance model { ...
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generate to Bayesian network form relationship data

I have the results between several elements according to how similar they are and this is given by the following table. element A element B element C element D element A ...
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67 views

How to specify a Dirichlet distribution?

I am learning the Dirichlet distribution using R. I want to model a case where a number of participants answer a uniform set of questions. Prior information is then fed to a MCMC simulation. My ...
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Interpreting the posterior distributions of a MCMC run using pymc

pymc is great! It really opened up my world to MCMC, so thank you for coding it. Currently I am using pymc to estimate some parameters and the confidence intervals by fitting a function to ...
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Equivalent of Bayesian average for unary rating system

I am really looking forward to implement bayesian average rating system for a site I'm developing. I have faced a problem though - all of the examples I can find on the net, are for multi-value rating ...
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Error in Hierarchical Bayesn in R : Bayesn Package

Disclosure: I have just started my career in Analytic and have basic knowledge about statistics. Hi, I am trying to execute HB analysis in R using the function rhierMnlRwMixture in the Bayesm ...
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jags posterior distribution mimics prior

I have this model to adjust Schechter luminosity function but no matter what prior values I choose, the posterior distribution of each parameter is pretty much the same as the prior. And if I run ...
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OpenBUGS error messages:Expected the collection operator c

I could not get the code below to work. it is a hierarchical one way ANOVA model, but when I click data load the error message that appears is expected the collection operator c. What does that mean? ...
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70 views

Bayesian Lasso using PyMC3

I'm trying to reproduce the results of this tutorial (see LASSO regression) on PyMC3. As commented on this reddit thread, the mixing for the first two coefficients wasn't good because the variables ...
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27 views

Size of continuous node in a Bayesian network

I am using Bayes net toolbox to implement a Bayes network. My question is about how do I define size of a continuous node. The toolbox documentation states: In addition to specifying the graph ...
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Prior Specification for Bayesian Estimation in MCMC Logit

I am building a logistic regression model using bayesian estimation. I am trying to specify my own priors (as multivariate normal distributed priors) in the mcmclogit package, i.e. I have beta ...
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Simple Bayesian Network causal independence [closed]

enter code hereI'm trying to answer this: A->B P(A) = 0.5 P(B|A=T) = 0.7 P(B|A=F) = 0.8 Then P(A|B) = ? Thanks!
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Residual Income Model (with Garch) to forecast stock prices

I would like to forecast stock prices based on a GARCH model. I would like to run each model for every company (share) and pool this into one GARCH model. I thought this could be done by some kind of ...
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JAGS: unit-specific time trends

Using JAGS I am trying to estimate a model including a unit-specific time trend. However, the problem is that I don't know how to model this and so far I have been unable to find a solution. As an ...
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Stan version of a JAGS model which includes a sum of discrete values - Is it possible?

I was trying to run this model in Stan. I have a running JAGS version of it (that returns highly autocorrelated parameters) and I know how to formulate it as CDF of a double exponential (with two ...
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Probability: the one true fish

I have exams in Machine Learning coming up and I need help answering this question. There are a million identical fish in a lake, one of which has swallowed the One True Ring. You must get it ...
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Naive Bayes Text Classification using Weka

Hye there! I need to know can somebody give me any idea for how can I use Weka for Naive Bayes Text Classification into my Java Project and how can I get the binaries for coding? The thing is I have ...