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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Matlab Bayesian Newtork toolbox and continuous values

I have two problems, one about theory and one about implementation: Theory First I have not fully understood how to work a Bayesian network with continuous values. I have learned that I can ...
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157 views

What does '-c' parameter do in Mahout trainnb commant?

I cannot understand for what -c parameter stands for in this Mahout command, when I am training Naive Bayes model: mahout trainnb -i train-vectors -el -li labelindex -o model -ow -c Does it turn on ...
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156 views

How can one simulate quantities of interest from the posterior density in MCMCglmm?

I would like to simulate quantities of interest from a model estimated with MCMCglmm more or less the way Zelig package does. In Zelig you can set the values you want for the independent values and ...
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Bayesian Linear Regression, why prior 0-mean?

Problem = y = w^T * x estimation of w via maximum a posteriori estimation! I don't understand why one often use a gaussian with 0-mean for the prior distribution of the model-vector w! For me this ...
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985 views

R: Making sense of the output of a MCMCglmm

I performed a MCMCglmm (MCMCglmm package). Here is the summary of this model Iterations = 3001:12991 Thinning interval = 10 Sample size = 1000 DIC: 211.0108 G-structure: ~Region ...
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30 views

Saving Bayesian Network in Matlab

I was wondering if there is a modified version of the BNT package constructors allowing to properly save a BN. I am not well versed in the class programming of Matlab and so far I was not successful ...
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95 views

What's the other major approach/paradigms in machine learning besides Baysian methods? [closed]

I just started my journey into the Machine Learning field. So far I know that Bayesian method is one of the major approaches in this field. So what other options are there? And any comparison between ...
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95 views

Assigning prior weights/preferences to predictor variables for regression tree analysis

Within R's "rpart" package for classification/regression trees, is it possible to specify prior weights for the predictor variables? Alternatively, is this a possibility with the BART (Bayesian ...
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48 views

Limit to the number of explanatory variables that R's BMA package can handle?

Using R's BMA (Bayesian Model Averaging) package, I want to run the following code: result = bic.glm(x,y,prior.param = c(1,1,1,1,0.5,1,0.5,0.5,0.5,1,1,1,1,1,0.5,1, 1,1,1,1,1,1,1,1,1,1,1,1,0.5,1), ...
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137 views

Best method to implement text classification (2 classes)

I have to write classifier for corpus of texts, which should separate all my texts into 2 classes. The corpus is very large (near 4 millions for test, and 50000 for study). But, what algorithm should ...
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74 views

MC algorithm for a non-conjugate model

The model is Poisson likelihood and Gaussian prior. I worked out the posterior for the model and I think that I have it coded correctly but I'm having a lot of trouble trying to implement the ...
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190 views

Porting Mixture Models to pymc3

I am attempting to port the gaussian mixture model as defined in: How to model a mixture of 3 Normals in PyMC? over to pymc3 Code import numpy as np from pymc import Model, Gamma, Normal, Dirichlet ...
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140 views

gwr fitting using package mgcv and R2Bayesx in R

I want to compare GWR fittings produced between spgwr and mgcv, but I got a error with gam function of mgcv . Here is a example : require(spgwr) require(mgcv) require(R2BayesX) data(columbus) ...
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50 views

Missing values in bayesian learning

Assume you have the following dataset, where the two variables Color and Size are observed: Color | Size ------+------ Red | Big White | Small Red | Small Red | Big White | Big Red | Big ...
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284 views

Multi-image processing with PyMC3

I have an image processing problem I thought I could use to experiment with learning more about PyMC3. I have spent a good amount of time fiddling with non-linear solvers and brute-force methods, and ...
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2answers
237 views

Bayesian statistics, machine learning: prior v.s hyperprior

I have a linear regression (say) model p(t|x;w) = N(t ; m , D); Being Bayesian, I can put a Gaussian prior on parameter w. However, I've realized for some models we can put Gaussian-Wishart ...
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130 views

Coding a posterior distribution in R [closed]

This may be a ridiculous question but I'm very new to R (started 3 weeks ago) but I'm running a Gibbs Sampler and I'm drawing from a non-conjugate distribution. It's set up as Yi|mu ~ ...
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89 views

How does Chi-Square based SPAM detection works in SpamAssassin

I'm trying to understand about Bayes based spam detection, and have difficulty understanding how to code it. To understand it, I'm reading code of SpamAssassin like below. ...
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140 views

R help. I'm running a Simple Gibbs Sampler for mu and sig^2 for normal data using informative non-conjugate priors

Mu is distributed as N(0,1) and sig^2 is distributed as IGamma(a,b) with a = 1, b = 2. I'm trying to create a couple of graphs (histograms, scatterplots, ACF, PACF) but keep getting error messages of ...
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132 views

How to speed up the rjags model training in Bayesian ranking?

All, I am doing Bayesian modeling using rjags. However, when the number of observation is larger than 1000. The graph size is too big. More specifically, I am doing a Bayesian ranking problem. ...
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3answers
276 views

Classification using Naive Bayes

I am trying to Classify a sample using Naive Bayes. My sample size is 2.8million records, 90% of the records have Class Label(dependent variable) = "0" and the rest have it as "1". The distribution in ...
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263 views

pymc 3.0 Predictive Posterior Distribution

I'm converting a very simple example from pymc 2.3 to pymc 3.0, and can't seem to figure out how to sample (or get the MAP) from the predictive posterior distribution. Following the suggestion in the ...
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73 views

tweet classification how to identify type of conversation [closed]

I've been reading papers on tweet classification and sentiment analysis. So far all of it was about positive and negative classification. What about if you want to identify the kind of communication ...
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107 views

naive bayes model in R

I am trying to classify my data using a naive bayes classifier. I am able to build the model but I am not able to use the predict function on the test data. Please suggest if any changes required. ...
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65 views

Naive Bayes All columns HAVE TO be Factor? or not

I am trying to understand how is Naive Bayes working. I have a dataset looks like this: > data.flu chills runnyNose headache fever flu 1 1 0 M 1 0 2 1 ...
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Bayesian Network based on outcomes

I'm pretty new here, but have a question that I would like some help with. I'm studying machine learning and specifically Bayesian Networks. The problem I am trying to solve is: Consider a cow that ...
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49 views

R get the cost function value from Predict

Say you created a naiveBayes model in R, and clearly, you can see all the conditional probabilities that are necessary to make the prediction for any given input. However, after I use predict to ...
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936 views

NaiveBayes in R Cannot Predict - factor(0) Levels:

I have a dataset looks like this: data.flu <- data.frame(chills = c(1,1,1,0,0,0,0,1), runnyNose = c(0,1,0,1,0,1,1,1), headache = c("M", "N", "S", "M", "N", "S", "S", "M"), fever = ...
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104 views

Naive Bayes in Python

I'm trying to do Laplace smoothing on my Naive Bayes code. It gives me 72.5% accuracy on 70% train 30% test set, which is kinda low. Does anyone see anything wrong? posTotal=len(pos) ...
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146 views

How to implement Priors for KNN in matlab

I have a question concerning KNN training. I want to implement the KNN like in the book Pattern Recognition and Machine Learning by C. M. Bishop. We need to find the conditional density, ...
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275 views

PyMC modeling hierarchical regression with unknown means and covariances

Model I have the following statistical model: r_i ~ N(r | mu_i, sigma) mu_i = w . Q_i w ~ N(w | phi, Sigma) prior(phi, Sigma) = NormalInvWishart(0, 1, k+1, I_k) Where sigma is known. Q_i and ...
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131 views

How to choose Gaussian basis functions hyperparameters for linear regression?

Good evening everyone, I'm quite new in machine learning environment, and I'm trying to understand properly some basis concept. My problem is the following: I have a set of data observation and the ...
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Detecting 'unusual behavior' using machine learning with CouchDB and Python?

I am collecting a lot of really interesting data points as users come to my Python web service. For example, I have their current city, state, country, user-agent, etc. What I'd like to be able to ...
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136 views

establish redis connection in python

I am using redisbayes library in python to implement naive bayes classification. But when I write - rb = redisbayes.RedisBayes(redis=redis.Redis()) rb.train('good', 'sunshine drugs love sex lobster ...
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87 views

How do Bayes nets simplify things?

I recently came across bayes networks. I read that they help in reducing the dimensionality of the joint probability distribution of n random variables (let them be boolean). In General ...
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456 views

Python NLTK not sentiment calculate correct

I do have some positive and negative sentence. I want very simple to use Python NLTK to train a NaiveBayesClassifier for investigate sentiment for other sentence. I try to use this code, but my ...
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92 views

How do I save all the draws from a MCMC posterior distribution to a file in R

I'm running a Hierarchical Lin Regr model using bayesm package in R. I have a data set with one dependent and 6 predictors. There are 207 unique respondents with 35 observations for each. I began by ...
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Python + Anaconda : Installing Zip file “bayesian-classifier-master.zip” using install_ext magic

I'm installing bayesian-classifier-master.zip from local disk after downloading from given link: https://github.com/codebox/bayesian-classifier/archive/master.zip Using following command: ...
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338 views

How to plot Bayesian prior and posterior distributions in one panel using R?

I've tried several approaches, including qqmath, lattice densityplot() and a number of panel functions like panel.mathdensity and panel.densityplot. However, I couldn't get them to do what I want them ...
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90 views

Using panel.mathdensity and panel.densityplot in lattice graphics to plot Bayesian prior and posterior

I am trying to plot a Bayesian prior and posterior distribution using lattice graphics. I would like to have both distributions in one panel, for direct comparison. I've tried different solutions all ...
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23 views

is gd star rating Bayesian

does anyone know if wordpress plugin GD Star Rating has Bayesian rating weight? I cant find any information in the description. I need lots of 4 Star ratings be better than only one 5 Star rating. ...
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204 views

For the multivariate normal model, why is jeffreys' prior distribution not a probability density?

For the multivariate normal model, Jeffreys' rule for generating a prior distribution on (theta, sigma) gives p_j(theta, sigma) proportional to |sigma|^{-(p+2)/2}. My book notes in a footnote that ...
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533 views

Weka: Does training helps if test run is followed by training run?

I have a doubt. I understood the cross validation and split concept where the classifier will learn from the training data and test on test data split. Does the same thing happen if I first run the ...
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310 views

Bayesian networks implementation in Java [closed]

Bayesian network: Please am currently doing a project on bayesian networks in java and am stuck on how to calculate p(a|b) because from a questionnaire, i only have the values of p(a), p(b). Please ...
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232 views

Bayesian Point Cloud Reconstruction implementation

I need to be able to generate a mesh from a unordered point cloud data. While I was trying to implement the Marching Cubes algorithm I stumbled across this paper: Bayesian Point Cloud Reconstruction ...
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Estimating parameters in multivariate classification

Newbie here typesetting my question, so excuse me if this don't work. I am trying to give a bayesian classifier for a multivariate classification problem where input is assumed to have multivariate ...
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101 views

How to get number of occurrences in R for Naive Bayes Classification

I am pretty new to R and was trying to analyse this example dataset to get started with Naive Bayes classification. Day Outlook Temperature Humidity Wind Play 1 Sunny Hot ...
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264 views

Code Equation of Ellipse in WinBUGS

I was looking for some help to code an equation of ellipse within WinBUGS. I need to form a Bivariate ellipse using p1's in my data. I tried to use the equation as (X-mu)'sigmainverse(X-mu), where X ...
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64 views

Human directed search

For all the machine-learning folks. What I'm wondering is how to search high dimensional data with the help of input in the form of user preference/clicks. Suppose I have a program that generates ...
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177 views

Simplest classifier with Weka

I'm traing to classify text using the Weka naive Bayesian. I trained the classifier over this two phrases: en "Hello" it "La casa è" The idea is to create a classifier for each n-grams size (1<= ...