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

learn more… | top users | synonyms

-2
votes
4answers
70 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.
2
votes
1answer
44 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 ...
0
votes
0answers
172 views

Using Naive Bayes Classifier in R - Train the classifier

I am currently trying to use the NB classifier to automatically classify Tweets. At the moment I am stuck, trying to train the classifier. Maybe there is someone who can help me. Data sample: ...
1
vote
0answers
49 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 ...
0
votes
0answers
120 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 ...
1
vote
0answers
90 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 ...
0
votes
0answers
36 views

Naive bayes classifying an unknown value

for my homework Machine Learning im dealing with a strange problem and i can't seem to come up with the solution for the problem. Here is the deal, the goal is to use naive bayes classifier in order ...
1
vote
2answers
134 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 ...
1
vote
0answers
48 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 ...
0
votes
1answer
28 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) ...
0
votes
1answer
45 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 ...
0
votes
0answers
27 views

Modelling Image data with mixture of gaussians

I want to fit the data of a 200 x 200 pixel single channel image into a Mixture of Gaussians. How do I estimate the unnormalized posterior distribution of this proposed model? How can I use MCMC ...
0
votes
1answer
137 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 ...
0
votes
1answer
56 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 ...
1
vote
1answer
217 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 ...
1
vote
0answers
90 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 ...
0
votes
1answer
179 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 ...
2
votes
2answers
575 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 ...
0
votes
0answers
54 views

True posterior mean and variance of Binomial Logit-Normal model

I am trying to find the true posterior mean and variance of Binomial Logit-Normal model. By true posterior I mean the posterior distribution prior to estimating it using BUGS. The posterior mean is a ...
0
votes
0answers
52 views

Defining a multi-dimensional Gaussian likelihood for pyMC

I just started using pymc and I would like to know how I can sample with pyMC a likelihood for multi-dimensional Gaussian? For example: Where is a vector of all parameters of a model () which I ...
1
vote
0answers
69 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: ...
0
votes
0answers
14 views

auto creation of categories from of text/data

The text classifications I have seen so far need training databases to start. What I am looking for is a method that can detect text or data that belongs in it's own category. For example 10000 ...
0
votes
0answers
122 views

NLTK - lexical diversity as feature

in NLTK I'm using a naive bayes classifier and I would like to use non-binary feature as lexical diversity. I know that I need to convert the non-binary features to a set of binary features (x < ...
0
votes
0answers
26 views

Statistics with prior probabilities

So I'm working with a question- if there are six people plus a butler who are accused of murdering a person. Typically the butler is the murderer 50% of the time. However, the lie detector which has a ...
0
votes
1answer
75 views

r2jags loop using estimated variable

I'm trying to figure out how to estimate a changepoint in my data, and to do so I would like to estimate random effects for the period prior to the changepoint and then for the period after the ...
0
votes
1answer
86 views

Machine Learning Algorithm Confusion

I made a small application about cricket prediction using Machine Learning. I took records of 10 years (2001-2011) of ODI matches and prepared a training set. Now to predict a win or loss for a ...
-1
votes
1answer
48 views

Need help R - Naive Bayes

Here is the last view of my data from R and its resulting error This data is in 0, 1, 2 format of a phenotype data. The last column holds the label value having first 1000 values being zero and ...
3
votes
1answer
98 views

OpenBUGS Code gives error 'expected a comma'

I am trying to fit a hierarchical model using OpenBUGS, with the following code: model { for( i in 1:n){ tausq[i] <- 1/pow(sigma[i], 2) psi[i] ~ dnorm(psi, tausq) psihat[i] ~ ...
1
vote
0answers
567 views

Naive Bayes Classification with R

I have been wrangling with R to classify tweets using a Naive Bayes classifier model. Data: Training set with 2 columns: Tweet and Class. There are 300 tweets: 150 classified as "App" and 150 ...
0
votes
1answer
53 views

Difference between empirical naive bayes & parametric bayes classifiers

Im trying to understand the difference between each of these. What is the difference between empirical naive bayes classifiers and parametric bayes classifiers?
0
votes
1answer
223 views

error message JAGS subset out of range

I am attempting to call the following jags model in R: model{ # Main model level 1 for (i in 1:N){ ficon[i] ~ dnorm(mu[i], tau) mu[i] <- alpha[country[i]] } # Priors level 1 ...
1
vote
0answers
397 views

variable selection using a Naive Bayes model in R — using the caret package and rfe function

I am trying to run the recursive feature elimination function in the caret package using a Naive Bayes' classifier. An example of my code is given below. I get the following error "Error in { : task ...
2
votes
1answer
377 views

R: multivariate Bayesian regression with MCMCregress throws an error

I am running in R a multivariate Bayesian regression (a numerical variable depends on 3 explanatory factor variables) with the MCMCregress function of the MCMCpack package. Unfortunately an error ...
1
vote
0answers
152 views

Text classification in python - (NLTK Sentence based)

I need to classify text and i am using Text blob python module to achieve it.I can use either Naive Bayes classifier/Decision tree. I am concern about the below mentioned points. 1) I Need to ...
2
votes
0answers
163 views

Solving the Price is Right

In Chapter 5 of Probabilistic Programming for Hackers, the author proposes the following solution to an instance of The Price is Right, where the goal is to estimate the posterior of the price of the ...
2
votes
2answers
148 views

How to speed up scrolling speed of PDF pages with large data plots (e.g. trace plots)

I am preparing a Latex document and a slide show for my Bayesian analysis results. Trace plots generated by "coda" package in R are very large in size. By size, I mean kilobytes (KB), and loading ...
0
votes
0answers
59 views

Simple Hierarhical Bayes in PyMC

I am trying to model a classical Hierarhical Bayes problem that is common to many textbooks. Suppose that we are trying to estimate the cancer rate in N cities. In each city, we sample a number of ...
0
votes
1answer
73 views

StringToWordVector filter weka

I have googled for explanation on weka StringToWordVector but to no avail. Does anyone know of any links of how does it actually work. I am trying to classify documents using naive Bayes but i am ...
0
votes
0answers
22 views

Computing Object Classification with bayesian statistics

Say I want to know if there is a zebra $\theta$, in an image $x$. According to Bayes statistics applies to image recognition, I should be computing: ...
0
votes
0answers
220 views

Estimating class probabilities with hierarchical random forest models

I am using a Random Forest classifier (in R) to predict the spatial distribution of multiple native plant communities using a variety of environmental variables as predictors. This classification ...
-1
votes
1answer
96 views

Bayes Classifier

Hello, I am totally confused in deriving bayes classifier. Normally, I would be given a problem like the one above so that i get the number of red dots and green dots and i calculate the feature ...
0
votes
0answers
24 views

How to build a bayesian classifier for data having continuous variables

I want to build a bayesian classifier which can work on data having continuous variables, which can give me the probabilistic output of class belonging. Is there any package available for this. I ...
0
votes
0answers
34 views

Bayesian net tool box error in marginalizing and find_mpe function

I am trying to use your Bnet tool box for an application and got an error message while using it. Code: N=8; dag=zeros(N,N); inexp=1; incpg=2; tg=3; dchg=4; noenfimpl=5; stiff=6; loos=7; reinter=8; ...
0
votes
0answers
127 views

writing an accuracy function for naive bayes classifiers in Python

I found a really good example that shows how a naive bayes classifier is written and done in python from this github link. However it is missing a function that enables the testing of accuracy when ...
1
vote
0answers
64 views

dynamic bayesian network toolkit

I'm searching on dynamic bayesian network toolkit; I’ve found GMTK for jiff bilmes, and a bayes net tool box for d. murphy. I found byesnet wich is developed using matlab hard for me so i'm training ...
0
votes
0answers
89 views

rcpp accumulate values in loops.-

I've experimenting a problem with rcpp. I'm coding a bayesian estimation and the likelihood function (vero) is apparently working very well. #include <RcppArmadillo.h> using namespace Rcpp; // ...
0
votes
0answers
76 views

Similar algorithm as Bayes prediction

I'm using Bayes algorithm to predict new incoming data. Its running on test data, so I can look how good prediction is. Each new data item has number of properties with information about learning ...
0
votes
2answers
108 views

Bayesian Networks Implementation with Example

I am trying to Code a Bayesian Network in .NET. I found a library called Infer.Net by Microsoft Research which is used for Probabilistic Reasoning about the Networks. But it would be easier if I could ...
1
vote
0answers
69 views

Error during naive bayes classifier

I have a dataset of 5000 points and 12 attributes(out of which is class variable)..I divided data in training(3000 points) and testing(2000 points) and the performed the classification on training ...
1
vote
1answer
52 views

String parsing via training examples

I'm in a position where I need to write a very large number of parsing rules (in other words, a function that transforms a string into another string or structured data) and while I figured I would ...