0
votes
0answers
21 views

Will any binary classification method works on this 2-D data?

I have a 2 dimensional data set with 15 subjects labeled as healthy and 15 labeled as non-healthy. The scatter plot in attachment. I have tried decision tree, nearst neighbor, SVM, but they rarely ...
0
votes
1answer
23 views

Significance Test for a Classification Task

Suppose for a classification task, I have algorithm A and algorithm B, and a labeled dataset of size M. Both algorithm A and algorithm B are ``deterministic" machine learning approaches, that is to ...
-2
votes
0answers
14 views

Selecting a threshold on probability for rejection/selection

I run a logistic regression for getting the probability of click on an ad. I get a reasonable accuracy of around .73 ROC so want to go ahead with putting this model live. Now how do it set a threshold ...
1
vote
0answers
30 views

Statistical Commute Analysis in Java

I have a rather large commute every day - it ranges between about an hour and about an hour and half of driving. I have been tracking my driving times, and want to continue to do so. I am capturing ...
0
votes
1answer
32 views

Failure prediction from sensor data using Machine Learning

I am going to do a research project which involves predicting imminent failure of an engine using time data obtained from sensors. The data basically contains the readings of various embedded sensors ...
0
votes
1answer
38 views

Machine learning for finding even/odd number getting incorrect/correct output for two different classifiers

I tried a Machine Learning algorithm on a hypothetical problem :- I made a fake feature vector and a fake result data set by the following python code :- x=[] y=[] for i in range(0,100000): ...
0
votes
1answer
28 views

generate a number of independent splits of dataset

when using sklearn split function, is it possible to produce k independent splits, namely, k splits that have at least one element not in common? If not, is there any other library that can be used?
0
votes
2answers
32 views

Is Maximum Likelihood Estimation (MLE) a parametric approach?

There are to main probabilistic approaches to novelty detection: parametric and non-parametric. Non-para assumes the distribution or density function derived from the training data, like Kernel ...
0
votes
1answer
34 views

How to get both MSE and R2 from a sklearn GridSearchCV?

I can use a GridSearchCV on a pipeline and specify scoring to either be 'MSE' or 'R2'. I can then access gridsearchcv._best_score to recover the one I specified. How do I also get the other score for ...
1
vote
1answer
67 views

Calculate the Cumulative Distribution Function (CDF) in Python

How can I calculate in python the Cumulative Distribution Function (CDF)? I want to calculate it from an array of points I have (discrete distribution), not with the continuous distributions that, ...
0
votes
0answers
36 views

Can a restricted boltzmann machine model the frequency of datapoints in a dataset?

I've been playing around with RBMs recently, and while I've gotten them to become good generative models of datasets (i.e. they generate only plausible datapoints), they don't seem to capture the ...
0
votes
0answers
26 views

Run Mclust in Python via rpy2 package

I was trying to run the mclust package in Python via rpy2. I ran into the problem of not being able to access the results in Python. In R, to apply Mclust, I would do the following (a simple example): ...
1
vote
1answer
26 views

How to generate data that fits the normal distribution within each class?

Using numpy, I need to produce training and test data for a machine learning problem. The model is able to predict three different classes (X,Y,Z). The classes represent the types of patients in ...
1
vote
1answer
23 views

Sampling from a high dimensional function

I have a function f that takes N real-valued inputs and is very expensive to compute. Each of the N inputs, call one by n, has a range of values (n_min, n_max) that it can take on. I am interested in ...
0
votes
0answers
26 views

Information Gain of a feature with respect to (a) feature and (b) class

I am finding difficulty in calculating the Information Gain. Can you explain how the information Gain is calculated for a feature with respect to a (a)class and (b) feature. Can you explain it ...
1
vote
0answers
16 views

Solving feature bias issues in Learning to Rank with implicit feedback

I have a learning to rank system where implicit feedback (from user clicks) is used to determine +ve and -ve examples for the training. The problem is that (obviously) the learner sees only the top ...
1
vote
0answers
65 views

Online model training in R

Let's say I have a model in R, a regression tree created by "rpart",using "data1" dataframe: TreeModel1 = rpart(DepVar ~ . ,data=data1,method="class") Is there a way to train the model with ...
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
0answers
55 views

Hyper-parameters of Gaussian Processes for Regression

I know a Gaussian Process Regression model is mainly specified by its covariance matrix and the free hyper-parameters act as the 'weights'of the model. But could anyone explain what do the 2 ...
0
votes
1answer
51 views

Threshold value in one-dimensional data

I have a list of similarity scores similarity_scores between two texts using some string matching method. I manually added actual_value to show if the texts were indeed similar. Is there any ...
0
votes
2answers
38 views

Gaussian Processes for Regression (GPR) and Logistic Regression (LR)

I want to implement a model for risk prediction (generate a percentage). I know LR would be adequate to this work but I would like to try GPR. My question is: is GPR a suitable choice in this case? I ...
0
votes
0answers
40 views

Machine Learning - Mutual Information

By playing with Mutual Information with R, I saw that by using 4 quantities such as Q1, Q2, Q3 and Q4, the (joint) entropy has always the same values whatever the order of the quantities's values ...
5
votes
1answer
115 views

Retrieving the optimal number of clusters in R

I have data for which I want to evaluate the optimal number of clusters according to the Gap statistic. I read the page on gap statistic in r which gives the following example: gs.pam.RU <- ...
0
votes
0answers
195 views

C5.0 classification using the caret package in R

I'm having trouble implementing the c5.0 in the caret package My code is as follows: C5fit <- train(Round~.,data = RoundTrain, method = "c5.0") When I try to fit the model I get the following ...
0
votes
0answers
136 views

Hot to use Fit() on python statsmodels GLM Poisson

I am following examples on statsmodels, and this Thread I wrote an example to build predictive model using GLM Poisson. But I got problem with the example I am writing. Can anyone point where the ...
0
votes
1answer
67 views

split data into training and valuation datasets with not representative class

I've got data set in which there are 130000 records and 15 variables. The variable that I want to describe is IsActive. The problem is that there are only 15000 records with this variable set to 1 ...
0
votes
0answers
27 views

bayes network to predict menu

I have a system that has about 200 menus that will be used by many users. I want to come up with a prediction algorithm based on the click data collected from the users. If user visited the menu A ...
0
votes
2answers
58 views

Markov Chain Monte Carlo, proposal distribution for multivariate Bernoulli distribution?

Is there a suitable proposal distribution for multivariate Bernoulli model ? for example I want to sample from a probability distribution p(x) = p*(x) / Z; where x = {0,1}^M and Z is the ...
0
votes
2answers
56 views

In NLP/probability/ML notation: what does a tilde over a letter mean?

I am reading this paper. In section 1.1 he says: What do the tildes above the letters mean? How can I translate this sentence into ordinary English?
0
votes
1answer
26 views

Categorizing points using known distributions

My problem is as follows: I am given a number of chi-squared values for the same collection of data sets, fitted with different models. (so, for example, for 5 collections of points, fitted with ...
0
votes
1answer
75 views

How is the R2 value in Scikit learn calculated?

The R^2 value returned by scikit learn can be negative. The docs say: "Unlike most other scores, R² score may be negative (it need not actually be the square of a quantity R)." However the ...
-2
votes
1answer
68 views

What statistical learning algorithm library should I use?

I'm trying to create a statistical learning algorithm that when trained will be able to classify two sets of data based on their differing content, judged by frequency of words used. (I don't know if ...
0
votes
0answers
36 views

Leave-one-out with ClassificationDiscriminant

I am trying to run LDA to classify responses into multiple classes, and I would like to use leave-one-out CV on the data. I understand that I can run something like the following: cls = ...
0
votes
1answer
40 views

How to view kmeans output in matlab?

I have a 2400x12 data which I would like to classify using kmeans. Can anybody tell me how I can see the output of kmeans? Thanks.
0
votes
1answer
136 views

Expectation Maximization(GMM-EM) never finds the correct parameters. (Mixture of Gaussians)

I am trying to learn Expectation Maximization for parameter estimation in Mixture of Gaussians (1D). However, it seems the algorithm rarely finds the right parameters. I am wondering if I am doing ...
1
vote
1answer
57 views

Optimizing Keyword Weights for a Web Crawler

I'm playing around with writing a web crawler that scans for a specific set of keywords and then assigns a global score to each domain it encounters based on a cumulative score I assigned to each ...
0
votes
1answer
49 views

Boxplot including outliers in R, make the whole ranges being compared.

I am comparing several values using R, they are 8 variables stored in 1000 length vectors. That means, 1000*8 matrix, 8 columns represent 8 variables. Then I call boxplot(test), I got like: The ...
1
vote
2answers
86 views

How to determine Expected Value of Wait Time for a random periodic process?

It has been awhile since I have done any real statistics, but I am hoping the Stack Overflow Community can help. While I can't give the exact application as it is proprietary, here is an equivalent ...
0
votes
0answers
88 views

R :Error in optimx.check(par, optcfg$ufn, optcfg$ugr, optcfg$uhess, lower: Cannot evaluate function at initial parameters

library(optimx) pairedData <- data.frame(x1=rnorm(100), x2=rnorm(100), x3=rnorm(100),x4=rnorm(100), l=sample(c(-1,1),100, replace=TRUE)) subjFunc <- function(M, pairedData, gamma, beta){ ...
-1
votes
3answers
42 views

How can i proof my results after mine some dataset?

I wonder if there´s anyway to proof the correctness of my results after apply some data mining algorithms to a set of data. When i say data mining algorithms im talking about the basic algorithms
1
vote
0answers
56 views

Main character detection post named-entity recognition

I'm trying to automatically detect the main characters from books or passages. I already have code in place to perform named-entity recognition, resulting is a set of named entities and their ...
3
votes
1answer
429 views

Trouble with predicting a fitted model in R's GLMNET package

I am trying to predict a car's MPG based on a number of variables by using ridge regression in R's GLMNET package. I have already separated the data into training and test data and dummy coded the ...
2
votes
2answers
181 views

Does the sigmoid function really matter in Logistic Regression?

I implemented a binary Logistic Regression classifier. Just to play, around I replaced the sigmoid function (1 / 1 + exp(-z)), with tanh. The results were exactly the same, with the same 0.5 threshold ...
1
vote
3answers
445 views

Intuition about the kernel trick in machine learning

I have successfully implemented a kernel perceptron classifier, that uses an RBF kernel. I understand that the kernel trick maps features to a higher dimension so that a linear hyperplane can be ...
0
votes
1answer
70 views

Inconsistent results with Perceptron algorithm

I am trying to implement the perceptron algorithm but am getting inconsistent results; I have noticed that the initialization of the weights is having a big impact. Is there anything I am blatantly ...
3
votes
2answers
672 views

Scikit-learn χ² (chi-squared) statistic and corresponding contingency table

In the docs for the chi-squared univariate feature selection function of scikit-learn http://scikit-learn.org/stable/modules/generated/sklearn.feature_selection.chi2.html, it states This score can ...
2
votes
2answers
78 views

Estimating probability of 2 dependent variables [closed]

I am working on a programming problem of 2 dependent variables X and Y. X is made of feature vector of size [128 x 1] and Y feature vector of size [64 x 1]. My problem is that the 2 variables are ...
0
votes
1answer
89 views

How to use different scaling approaches in weka

I am using logistic regression with my data in weka. Now I want to try different scaling approaches to improve my results, such as min/max, zero mean/unit, variance, length etc. Is there any option ...
-3
votes
1answer
141 views

I want to implement i-vector algorithm. Any existing solutions to look at? [closed]

I am looking to implement i-Vector algorithm for speech. Do you know any available source code (MATLAB, C, C++, Python etc) or step by step algorithm to implement it? A good literature with examples ...
1
vote
1answer
85 views

What are the different strategies for detecting noisy data in a pile of text?

I have around 10 GB of text from which I extract features based on bag of words model. The problem is that the feature space is very high dimensional(1 million words) and I can not discard words based ...