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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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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1answer
96 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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0answers
308 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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2answers
258 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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83 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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218 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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111 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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130 views

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

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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65 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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180 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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100 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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58 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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189 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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29 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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1answer
35 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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192 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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1answer
132 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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229 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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125 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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1answer
240 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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2answers
237 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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3answers
270 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 ...
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74 views

pymc MAP warning : Stochastic tau's value is neither numerical nor array with floating-point dtype. Recommend fitting method fmin (default)

I have looked at a similar question here pymc warning: value is neither numerical nor array with floating-point dtype but there are no answers, can someone please tell me whether I should ignore ...
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44 views

PyMC trace not changing?

Full notebook is here. The problem is in the last Cox model at the end. The rest agree with the paper. Background. W is a shared frailty. I have 430 districts that are in 48 states. I want the value ...
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307 views

Fitting power law function with PyMC

I am currently trying to use PyMC for determining the parameters of a power law fit for given data. I am using the pdf formula taken from: A. Clauset, C. R. Shalizi, and M. E. J. Newman, ...
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274 views

How to simulate quantities of interest using arm or rstanarm packages in R?

I would like to know how to simulate quantities of interest out of a regression model estimated using either the arm or the rstanarm packages in R. I am a newbie in Bayesian methods and R and have ...
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1answer
365 views

Select Features for Naive Bayes Clasification in R

i want to use naive Bayes classifier to make some predictions. So far i can make the prediction with the following (sample) code in R library(klaR) library(caret) Faktor<-x <- sample( ...
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121 views

computing cumulative distribution of a conditional probability distribution

I have a conditional probability of z for the given m, p(z|m), where the coefficients are chosen in order that integral over z in the limit of [0,1.5] and m in the range of [18:28] would be equal to ...
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25 views

Library for using plates in bayesian networks(preferably c++)

In my Bayesian network there are plenty of repetitive variables leading to the use of plates(http://en.wikipedia.org/wiki/Plate_notation). I do not want the exponential space complexity in ...
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128 views

Why Naive Bayes Calculate result is Negative? use Spark1.0.0 Mllib

I'm try to implement Spark1.0.0 MLlib - Naive Bayes(http://spark.apache.org/docs/latest/mllib-naive-bayes.html). And use the default sample code & data(sample_naive_bayes_data.txt) like below, ...
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843 views

Dirichlet-Multinomial WinBUGS code

So I'm trying to code a dirichlet-multinomial model using BUGS. Basically I have 18 regions and 3 categories per region. In example, Region 1: 0.50 belongs to Low, 0.30 belongs to Middle, and 0.20 ...
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253 views

Gamma Distributions in Pymc - Bayesian Testing

I've closely followed this book (http://nbviewer.ipython.org/github/CamDavidsonPilon/Probabilistic-Programming-and-Bayesian-Methods-for-Hackers/blob/master/Chapter2_MorePyMC/MorePyMC.ipynb) but have ...
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1answer
386 views

Difference between BUGS model and PyMC?

I'm unable to replicate results from provided BUGS code using PyMC. The BUGS model is the Andersen-Gill multiplicative intensity Cox PH model. model { # Set up data for(i in 1:Nsubj) ...
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4answers
86 views

I don't understand Bayes' rule [closed]

I know that Bayes' rule is in form of P(A/B)=P(B/A)*P(A)/P(B) What I don't understand is, what means P(A/B) and P(B/A) ? Regards.
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50 views

Beer Ranking Tournament

I would like to invite a number of friends over for a beer ranking tournament. Every attendee will be asked to bring a 'bomber' (1 pint) of the best beer they can find. Let F be a vector of friends ...
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75 views

Gaussian Naive Bayes classifiers - how is the data distributed?

Gaussian Naive Bayes assumes that the continuous values associated with each class are distributed according to a Gaussian distribution. How can data be distributed Normally if it only has two ...
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173 views

Naive Bayes testing on unseen data

I have built a Bayes Classifier (from bnlearn package, since I want to do a multinomial Bayes model) on a dataset containg text messages. My Training set looks like the below: I have to classify a ...
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173 views

PyMC Robust Linear Regression with Measured Uncertainties

I use least squares regression of data with measured errors in both x and y and use the reduced chi-square (mean square weighted deviation: mswd) as a measure of the fit. However, some of the ...
2
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3answers
296 views

NA/NaN values in bnlearn package R

I am using the bnlearn package in R to handle large amounts of data in Bayesian networks. The variables are discrete and have more than 3 million observations. With bn.fit function I could easily get ...
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59 views

Formula for posterior probability calculation within klaR package of R

I am using the NaiveBayes() function within the klaR package of R. My training dataset is below. The Response variable is "Grad" (i.e did the student graduate or not) and the Predictor Variables are ...
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33 views

choose the best class if 2 class have same P (c|d), naive bayes

Hello I have some question about naive bayes classifier . In my project I have to classify a text into a class from 4 available class. In naive bayes we have formula like cmap=argmax.P(d|c).P(c) ...
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1answer
62 views

Recursive Bayesian with pymc

In general bayesian inference works like: prior = foo for data in (dataSet as it arrives): posterior = prior+model+data prior = posterior The amazing pakedge PyMC seems to have the ...
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1answer
209 views

Constructing a Cumulative Distribution Function using a multi-variable pdf

I am constructing 2 arbitrary PDFs (probability density functions) from a kernel function and representing them as 2 column vectors lets call them A and B. Each of these pdf is dependant on each ...
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1answer
69 views

Weka machine learning - Interpeting naive bayes

I got a training dataset of ill horses, the data it contains is about surgeries and diseases. Some of the fields of the registers are like: temperature of the horse, age, pulse, respiratory rate etc ...
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379 views

Multinomial distribution in PyMC

I am a newbie to pymc. I have read the required stuff on github and was doing fine till I was stuck with this problem. I want to make a collection of multinomial random variables which I can later ...
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142 views

Algorithm that identify same product with (slightly) different names

I am mining data from a second-hand camera trading platform. People give different names to the same products. The data I obtained are as follows: ... Canon 50mm f1.4 Canon 50mm 1.4 Canon 50mm 1.4 ...
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1answer
298 views

setting up MCMC with log-likelihood and log-normal prior with PyMC

I am a newbie with pyMC and I am not still able to construct the structure of my MCMC with pyMC. I would like to establish a chain and I am confused how to define my parameters and log-likelihood ...
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2answers
749 views

Simulating in R- how can I make this faster?

I am simulating something like Jim Berger's applet. The simulation works like this: I will generate a sample x of size n either from the null distribution N(0,1) or from the alternative distribution ...
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107 views

Naive Bayes Results not Generating in RapidMiner

I'm running a Naive Bayes process in RapidMiner on Fisher's Iris dataset. My main process is as follows: Retrieve Iris, Set Role, Validation The Validation subprocess is as follows: ...