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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Error from amavisd-new-cronjob sa-sync

My Amavis which i run in a Ubuntu 14.04.1 LTS sends me every day about 4 Mails with following content: "pyzor: check failed: internal error, python traceback seen in response" Well since i didnt see ...
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52 views

How to predict healthy of leaf using image processing technique? [closed]

Hi i want to predict health level(High,medium,low) in leaf using image processing and data mining.So far i thought using extract colors from leaf using Bayes algorithm to predict healthy of leaf. and ...
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50 views

Using pymc.potential to prevent evaluation of function at meaningless parameters values

I am building a pymc model which must evaluate a very cpu expensive function (up to 1 sec per call on a very decent hardware). I am trying to limit the explored parameter space to meaningful solutions ...
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77 views

Getting error related CrossTable in R while doing naiveBayes

Getting an error, please help A_raw <- read.csv("A.csv", stringsAsFactors = TRUE) A_rand <- A_raw[order(runif(1000)), ] A_train <- A_rand[1:900, ] A_test <- A_rand[901:1000, ] ...
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174 views

Error in R finding naiveBayes

I am getting Error: could not find function "naiveBayes" in R even after successfully installing package e1071. What else do I need to do?
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163 views

Naive Bayes classifier - accuracy

I'm using Naive Bayes classifier in Weka on a data set of 7000 instances with 15 attributes. My baseline accuracy is 87.5% using ZeroR. As a part of data preprocessing I normalized the data set with ...
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109 views

Eliminating predictions with low confidence with Naive Baye's

I have been trying the Naive Baye's implementation of Spark's MLlib.During testing phase, I wish to eliminate data with low confidence of prediction. My data set primarily consists of form based ...
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57 views

Gibbs sampling scheme on Ozone35 data set

I'm attempting to run a Gibbs sampling scheme on the data set Ozone35 from the BayesVarSel package in R. Here is the info on the data set Ozone35: A data frame with 178 observations on the following ...
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61 views

how to calculate unknown probabilities in the bayesian network

I am working on a bayesian network problem. I read the following network from this website (see the worked out example 1): Note also a property of the alarm: "The alarm goes off if the reactor ...
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147 views

using Bayesian algorithm to calculate the top 10 products

So in my system which is written in c#, the user can rate the product from 1 to 5 with the chunks of 0.5 points, so basically the points are 0.5, 1.0, 1.5, 2.0, 2.5, 3.0, 3.5, 4.0, 4.5, 5.0 now I want ...
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42 views

Can I classify about 1200 categories from “Naive Bayesian classsifier ”?

Commonly, Naive Bayesian examples classify binary classification.(ex) ham <-> spam, male <-> female). I want to classify many categroies by using Naive Bayesian. about 1200 categories. ...
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46 views

How to interpret Weka classifier response

im trying to figure out, how to make predictions on instances. I have this structure in my ARFF file: @relation vent @attribute humidity-0 numeric ... @attribute humidity-29 numeric ... @attribute ...
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59 views

Bayesian Algorithm for sorting hotel reviews

i'm trying to find a Formula or algorithm to sort the most useful rating for a set of hotel reviews. The thing is that i have in a determined place three different hotels that has the following ...
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105 views

Calculation of Bayesian Information Criterion for EM algorithm

The formula for calculating BIC is given by, BIC = -log(data/theta) - (# of parameter / 2) * log(n). Suppose the following is the case: 2D Gaussian data with number of samples(n) = 500 and number ...
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78 views

Using pymc3 to fit Student's t distribution

Not sure if I am doing something silly or pymc3 has a bug, but trying to fit T distribution to normal I get number of degrees of freedom (0.18 to 0.25, I'd expect something high, 4-5 at least). Of ...
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100 views

How to define General deterministic function in PyMC

In my model, I need to obtain the value of my deterministic variable from a set of parent variables using a complicated python function. Is it possible to do that? Following is a pyMC3 code which ...
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102 views

How can I convert OpenBUGS Coda file to mcmc object in R?

I used OpenBUGS and it produced coda files of MCMC output. To calculate and plot Gelman Rubin and Geweke diagnostics, I need to convert this coda.odc file to a mcmc object in R? Is there any way to do ...
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74 views

Bayesian Classification, example from Clojure For Machine Learning

I am currently learning this algorithm for Bayesian Classification and when i was trying to follow along an example in the book i got these weird results which wasn't concise with the examples in the ...
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48 views

plot a binomial negative with alpha and beta parameters in R

How can I plot a Negative Binomial with parameters alpha=1.71 and beta=1.05 I've traied barplot(table(rnbinom(10000,1.71,1.05))/10000)
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449 views

MCMCglmm multinomial model in R

I'm trying to create a model using the MCMCglmm package in R. The data are structured as follows, where dyad, focal, other are all random effects, predict1-2 are predictor variables, and response ...
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103 views

Bayesian Network with Continuous(gaussian) variables in matlab

I try to implement a bayesian network with gaussian nodes in matlab. I use the bayes network tool. My data is a table wich rows are 82 genes and columns 425 samples(82*425 matrix). My main problems ...
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182 views

how to use netlab functions for bayesian neural network in matlab?

i want to use NETLAB toolbox in matlab to perform bayesian neural network.my data has 7 neurons in input layes,one hidden layae with 5 neurons and 1 output and i have 62 data. I copied and exrtacted ...
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73 views

efficient discrete bayes filter for localization

I'm trying to implement a discrete bayes filter (i.e. histogram filter) for robot localization as described in 'Probabilistic Robotics' by Thrun, Burgard, and Fox. The model is a robot that moves in ...
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88 views

How to get a posterior of a difference using MCMCpack?

I'm trying to get a posterior distribution using MCMCpack of a difference between two conversion rates, akin to the A and B Together section of this PyMC tutorial. I can get the posteriors of the ...
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217 views

java.lang.OutOfMemoryError using bartMachine package in R

I ran a BART model with 11000 samples and 20 features(half of them are categorical variable). My mac has 8G ram. At first, I set memory to 5000 MB via function set_bart_machine_memory(5000). Then I ...
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30 views

(Sequential) weighted sampling

I need to figure out the total path (A to Z) followed by an agent through a squared-element grid. Each grid element has a probability density function Delta assigned to it that represents the probable ...
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30 views

scikit learn classify irrelevant(out of domain) data

I have trained my classifier using 20 domain, using MultinomialNB. The classifier is working fine for 20 trained datasets. But issue is, suppose I am making query with text out of 20 domains, even ...
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84 views

PyMC code gives unusual results

I tried to solve a logistic regression model using PyMC. However, the diagnostic plots show very high autocorrelations and after repeated sampling from the posterior distribution, I sometimes obtain ...
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251 views

Creating eset object from preprocessed expression matrix?

I am analysing with R some gene expression data. I would like to do differential gene expression analysis with limma's eBayes (limma is part of BioConductor), but to do that I need to have my ...
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223 views

How to obtain new samples from ZIP or ZINB-model for bayesian p-value

Hopefully someone can help me with this one, because I am really stuck and do not find my coding error! I am fitting zero-inflated poisson / negative binomial GLMs (no random effects) in JAGS (with ...
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67 views

Bayesian Statistics

I need to know how to find the Bayesian probability of two discrete distributions. For example the distributions are given as follows: hypo_A=[ 0.1,0.4,0.5,0.0,0.0,0.0] hypo_B=[ ...
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200 views

Comparing two biased coins (newbie example from Kruschke book)

I'm an absolute newbie to Bayesian stats and MCMC, so I'm working my way through "Doing Bayesian Data Analysis: A Tutorial with R and BUGS" by John Kruschke. To test my understanding, I'm trying to ...
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106 views

Does scikit learn include a Naive Bayes classifier with continuous inputs?

Is there anything in scikit learn that can help me with the following? I need a Bayesian network that is capable of taking continuous valued inputs and training against continuous valued targets. I ...
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114 views

How can the prior probabilities manually set for the Naive Bayes clf in scikit-learn?

How can I assign "custom" prior probabilities to the Bayes rule in the naive Bayes classifier in scikit? For simplicity, let's take the Iris dataset for example, where we have 150 samples and 3 ...
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61 views

how to set key for deterministic variable in pymc

I'm trying to plot the difference between two variables. I'm following the example set here (search for true_p_A and it will be in the right section) Here is my code def cool(test): ...
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151 views

How to calculate model residuals from MCMCregress

I'm doing classwork using Bayesian inference. For this, I'm using the MCMCregress function, from MCMCpack. The problem comes when I want to get the residuals, because the function doesn't provide ...
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91 views

Naive bayes classifier calculation

I'm trying to use naive Bayes classifier to classify my dataset.My questions are: 1- Usually when we try to calculate the likehood we use the formula: P(c|x)= P(c|x1) * P(c|x2)*...P(c|xn)*P(c) . But ...
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49 views

how to fill-in (approximate) the missing values of a sparce matrix

I have a big sparse matrix of data. The matrix has already been discretized, that is, every nominal-type column have been converted into a series of boolean-type columns. So, assuming that rows ...
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56 views

Running a program on Google Cloud

The program that I want to run, in particular, is mrbayes. I have set my project up, set up a VM instance (mrbayestest) and accessed it via terminal. I have uploaded the necessary mrbayes files to ...
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163 views

How to define a model in PyMC3 with one parameter constrained to the same value for several conditions

I want to write a model, like the one below. The main idea is that I have several conditions (or treatments) all parameters are estimated for each condition independently, except the kappa parameter ...
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27 views

using R's discrete.bayes with scalar data and vector prior

I'm having trouble computing Bayesian posterior from some data. My data are basically one scalar: a difference between two means (df = a-b), which equals precisely 0.27, my prior is supposed to catch ...
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33 views

Defining the exponential prior with jumping order of magnitude in parameter space

I want to define an Exponential prior for a parameter as following Therefore I have defined it in pymc with @pm.stochastic def MASS(value=math.pow(10,15), rate = math.pow(10,15)): """mass is ...
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160 views

PyMC, deterministic nodes in loops

I'm a bit new to Python and PyMC, and making rapid progress. But I'm just confused about the use of setting deterministic values of a 2D matrix. I have a model below, that I cannot get to parse ...
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97 views

Bayesian classification or similar technique for recommendation system

I'm working on a news app. On the home page, the user sees a list of headlines and then he can click one to read the article and comment. I would like to offer an option for "recommended articles" ...
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204 views

Unable to generate initial values for node <hyperprior> of type UpdaterGamma.Updater in openbugs

I am trying to run the following model in R with OpenBugs model { # Likelihood. for ( i in 1 : N ) { Y[i] ~ dnorm( mu[i], tau ) mu[i] <- alpha+beta*x[i]} # Prior. ...
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110 views

Defining priors and marginalizing over priors in pymc

I am going through the tutorial about Monte Carlo Markov Chain process with pymc library. I am also a newbie using pymc and try to establish my own MCMC process. I have faced couple of question that I ...
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203 views

How to define a custom prior in PyMC3

I would like to know if it is possible to define a custom prior in PyMC3 (and how to do it). From here it seems that in PyMC2 is relatively easy to do (without the need to modified the source code), ...
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219 views

Bandit-like Algorithm to Optimize Parameters?

I need an algorithm to optimize the time of the week that I show a message to a user to ensure the highest probability that the user will click the message. When the message is shown, a database ...
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232 views

Using rmultinom with Rcpp

I'd like to use the R function rmultinom in c++ code to be used with Rcpp. I get an error about not enough arguments - I am unfamiliar with what these arguments ought to be, as they do not corresond ...
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59 views

Weka not printing the label for prediction

I am trying to output the predictions of a test data set after loading a model into weka. The file is in .csv format and the classifier I am using is NaiveBayes. I am setting the supplied test to a ...