0
votes
0answers
2 views

Simulating from a normal with “unknown” variance [migrated]

Suppose I want to performing sampling from a normal distribution with an unspecified variance, and I want a way to sample so that I am in some sense "averaging out the possible values of the ...
0
votes
1answer
49 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 ...
2
votes
1answer
38 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
1answer
125 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 ...
0
votes
0answers
22 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
0answers
56 views

Maximum a Posteriori to Match Points

I have been studying about Maximum a Posteriori and I tried to apply this concept to the problem of matching points, i.e. given two point sets X and Y, I would like to find the most likely ...
2
votes
2answers
50 views

Topic models in a structured document? (or would EM or MCMC work?)

I have a set of documents that each consist of N words. The ith word of each document is selected from a common set of words, Wi={wi1, wi2, wi3, wi4}. For example, the first word in each document ...
1
vote
1answer
878 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 ...
1
vote
1answer
180 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 ...
0
votes
2answers
220 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 ...
0
votes
1answer
170 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 ...
1
vote
1answer
2k views

how to plot joint distribtuion of 2 random variable having 1000 data

here is the code i wrote to generate probability distribtuion of two random variable. now i would like to plot JPD. clear all; clc; x1 = randn(1000,1); x2 = 10*randn(1000,1); [count_1, b] = ...
-1
votes
1answer
156 views

Individual-level parameter estimates from ordered choice regressions [closed]

I have got a question regarding ordered choice regressions in R. I have several demographic variables with which I want to explain the ordered choice of individuals within a survey in an ordered ...
0
votes
1answer
465 views

How does Laplace Smoothing Effect Prior / Evidence

I have a probability / stats question related to implementing Naive Bayes Classifiers, in particular about implementing Laplace Smoothing to avoid the Zero count issue and overfitting. From what Ive ...
8
votes
5answers
3k views

Naive Bayes classifier and discriminant analysis accuracy is way off

So I have two methods of classification, Discriminant analysis diaglinear classification (naive bayes) and the pure Naive Bayes classifier implemented in matlab, there are 23 classes in the entire ...
6
votes
1answer
729 views

OpenBUGS fails to converge on model that converges in WinBUGS. Precision limit?

As the title of this post says, when I try to run code and data that work fine in WinBUGS from R using BRugsFit (with coda=T), I get these errors: Error in glm.fit(x = structure(c(1, 1, 1, 1, 1, 1, ...
2
votes
1answer
1k views

How is the “prediction” column in the Weka Naive Bayes output calculated?

I did a Naive Bayes classification using 10 fold cross-validation, obtaining a table prediction on the test data that looks like this: === Predictions on test data === inst# actual predicted ...
2
votes
1answer
998 views

Apply Bayesian average in a NON 5-star rating system

I am looking forward to apply the bayesian approach to prioritize a list that could take the number of likes, dislikes and review counts into consideration. The approach listed in here relies on the ...
1
vote
1answer
993 views

Matlab Naive Bayes

Hello Im using the KDD 1999 dataset and I was looking to apply naive bayes in matlab to it. What I want to know is the kdd dataset is a 494021x42 array of data, if you notice "training" and ...
1
vote
1answer
256 views

bayes net open source [closed]

Can anyone recommend a good opensource or free bayes net software program? I have been using baysealab with a class, but my account will expire and I'd like to continue building and using bns.
0
votes
1answer
1k views

online learning with Naive Bayes Classifier

I am trying to predict the inter-arrival time of the incoming network packets. I measure the inter-arrival times of network packets and represent this data in the form of binary features: xi= ...
0
votes
2answers
135 views

how to predict quality of data?

I'm very sorry if I'm wording this wrong in advance but I have a large dataset and I am trying to analyze it, but most of the data is not correct and need some help figuring out how to select the ...
5
votes
3answers
249 views

AI / Statistical methods for determining the name of a colour

I'm thinking about writing a little library to make a guess at the name of an (RGB value) colour, from a predetermined list of candidates. My first attempt was based purely on pythagorean distance ...
1
vote
3answers
2k views

Naive Bayesian classification (spam filtering) - Which calculation is right?

I am implementing Naive Bayesian classifier for spam filtering. I have doubt on some calculation. Please clarify me what to do. Here is my question. In this method, you have to calculate P(S|W) ...
4
votes
5answers
1k views

naive bayesian spam filter question

I am planning to implement spam filter using Naive Bayesian classification model. Online I see a lot of info on Naive Bayesian classification, but the problem is its a lot of mathematical stuff, ...
3
votes
2answers
2k views

Weighted Average and Ratings

Maths isn't my strong point and I'm at a loss here. Basically, all I need is a simple formula that will give a weighted rating on a scale of 1 to 5. If there are very few votes, they carry less ...
5
votes
2answers
161 views

blindly classifying new trends in incoming data

how do news outlets like google news automatically classify and rank documents about emerging topics, like "obama's 2011 budget"? i've got a pile of articles tagged with baseball data like player ...
8
votes
5answers
544 views

Algorithms to find stuff a user would like based on other users likes

I'm thinking of writing an app to classify movies in an HTPC based on what the family members like. I don't know statistics or AI, but the stuff here looks very juicy. I wouldn't know where to start ...
33
votes
8answers
5k views

What is a better way to sort by a 5 star rating?

I'm trying to sort a bunch of products by customer ratings using a 5 star system. The site I'm setting this up for does not have a lot of ratings and continue to add new products so it will usually ...
4
votes
1answer
1k views

Is there an R package for learning a Dirichlet prior from counts data

I'm looking for a an R package which can be used to train a Dirichlet prior from counts data. I'm asking for a colleague who's using R, and don't use it myself, so I'm not too sure how to look for ...