Methods and principles of building "computer systems that automatically improve with experience."

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How to calculate entropy in log Scale?

I'm working on a problem , where a function returns the Log probability of P(X=x) . Now I would like to find the Entropy of X. But since the probabilities I get are log probabilities, again taking its ...
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101 views

Fitting a logistic regression using lassoglm in matlab

I am fitting a logistic regression model using lassoglm in matlab. I issued the following command ...
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48 views

Classifying high-dimensional data

I'm only learning about classification but why is it common practice to use PCA before using a Support Vector Machine? Assuming I have 128*10 features and only 90 datapoints for each, do I need to ...
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9 views

Recall Precision curve, precision jumps at high recall [duplicate]

I am trying to plot a recall-precision curve for an object detection algorithm. In order to detect objects, I create a vote-map (2D histogram) in which object centres are voted for. I then filter ...
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1answer
165 views

How to calculate recall-precision curves

I am trying to plot a recall-precision curve for an object detection algorithm. In order to detect objects, I create a vote-map (2D histogram) in which object centres are voted for. I then filter ...
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1answer
160 views

understanding of libsvm output

I applied libsvm to build a text classifier. The output looks like as follows: ...
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1answer
162 views

Predicting Football match winners based only on previous data of same match

I'm a huge football (soccer) fan and interested in machine learning too. As a project for my ML course I'm trying to build a model that would predict the chance of winning for the home team, given the ...
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40 views

Which level of abstraction is appropriate when designing a Hidden Markov Model?

Bear with me, it is all new to me. I have measured a thing repeatedly over a period of time and I have clustered the results. (Clustered the measured values without the time information.) The ...
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77 views

Wavelets and machine learning

I am trying to learn features from a signal using Wavelet transform and then apply ML techniques on it to classify a signal. The problem I am facing is that, at each of level of decomposition, my ...
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1answer
76 views

Variable importance randomForest negative values

I am asking myself if it is a good idea to remove those variables with a negative variable importance value ("%IncMSE") in a regression context. And if it gives me a better prediction? What do you ...
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1answer
43 views

How does Logistic regression classifier modelize the dataset?

I'm working on a system that be able to detect the hand contour. So I have 270 instance in my dataset: 7 class of hand contour, 8 feature vectors of each instance. Firstly, I used Weka to determine ...
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1answer
192 views

ROC curve and confusion matrix in classifier performance evaluation

I applied two different classifiers against the same validation set. It turns out that classifier A is better than classifier B in terms of ROC curve. However, classifier B is better than classifier ...
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137 views

Matrix factorization and gradient descent for recommender systems; user bias?

I've been reading about using Matrix Factorization techniques to do collaborative filtering. A popular thing to do seems to be to add user and item biases into the ratings prediction. What I don't ...
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30 views

Can very large numbers of samples throw off Naive Bayes?

I'm writing what is effectively a spam filtering system. I have about three million samples, mostly bag-of-words and top-tfidf based samples, and I'm seeing abysmal precision and recall. I'm trying to ...
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1answer
171 views

Logistic regression as classifier and overfitting

I am using logistic regression to classify data into two classes. The variable to predict (Y) is either 0 or 1. I have found a rather good estimation of Y by logistic regression, and ended up using ...
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85 views

Description of all models in R's caret package? [closed]

I've been looking into machine learning recently, mostly using R. I just came across the caret package and it seems to be brilliant for quickly trying out different models. It seems a great tool for ...
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1answer
64 views

Derivation of the posterior over topics in LDA

When studying the latent Dirichlet allocation, I am not very clear about some procedures in their deriving equations. Please refer to the attached figure, how to understand those two steps, marked as ...
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2answers
43 views

difference in training and testing procedure of model

Can anyone please tell me the difference in training and testing of a model. I have developed 5/6 different single pass online learning algorithm (ets, ets+, evolving fuzzy modelling, SOFNN, ...
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1answer
95 views

Decision tree : handle attribute with many nominal values

I would like to build a decision tree from a training data. I have an attribute with many nominal values. For example, the department name attribute has about 20-30 values. I would like to group ...
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92 views

How to compute precision for a multiclass problem?

I have a question about calculating precision on a multiclass problem. If the true positives of some actual class is 0, and its false negatives is also 0, then how to calculate its recall? In this ...
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89 views

Predicting twitter activity using time series analysis

I'm interested to build a model for predicting how many tweets people I follow will probably tweet today (or by hour), based on their previous tweets in the last 60 days (or more). Of course that the ...
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1answer
62 views

Non-independence of IVs in a random forest model

How is a random forest model affected if some of the variables are not independent?
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1answer
94 views

Choosing a better data-set

I have two data-sets for same samples. But they are produced using two different instruments. I want to choose one data-set for further analysis. How can I find/prove which data-set is better? To ...
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90 views

Using priors to detect an effect? logistic Bayesian regression

I have designed an idea and am looking for similar approaches in other literature/areas or if I have applied the Bayesian concepts wrongly. Here is a statement of my problem: I am modeling the ...
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37 views

Form field identification

I am working on a problem in which given a form (mostly scanned) one needs to automatically detect all the fields and their corresponding values from it. The information that I have is location of ...
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1answer
126 views

Using the appropriate machine learning algorithm

I am not sure if this is the right forum to ask this. I have some data of the houses, like their size(in square meters), if they use aircondition, how many residents live in, I have their electricity ...
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1answer
119 views

what should be the parametric form of the l2 regularization in a Bayesian setting?

In a Bayesian setting for parameter estimation, what should be the parametric form of the prior distribution in order to perform l2 regularization?
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176 views

How helpful is a quant job in Goldman Sachs for later PhD in Machine Learning?

I am a masters in Computer Science and am interested in pursuing a career in Machine Learning, possibly academic, in the long run. I have been offered a position related to Financial Modelling at ...
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78 views

Random Forest or other machine learning techniques with paired samples

I am trying to select features from paired samples and was wondering if there are methods out there that adapt random Forest or other machine learning algorithms to paired samples i.e. if randomForest ...
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41 views

May I get HMM calculations Checked?

I was trying to understand Hidden Markov Model(HMM). I was working out some examples. The first work out was on initial probability, transition probability and emission probability. I was trying to ...
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3answers
174 views

Binary classification machine learning

I have data set (30,000) mapping people to incomes(<=some number ,>some number) each instance has 15 features so as age, education. I would like some advice/pointers as to the best machine ...
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4answers
167 views

Neural networks for simplistic image classification

I want to train a neural network to classify a few simple, cartoony images like the ones below (for the moment I only have the classes house, tree, and sword). The images I am (currently) using ...
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1answer
45 views

How can I estimate a score for my users, on if they will match ad campaign criteria?

I have ad campaigns that I want to display to users. Each one has criteria a user must meet in order for them to be valid for the campaign. For example, "User must be in the USA", or "User must like ...
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51 views

Online Linear Regression with updates on past information

Suppose we have the following algorithm An online linear regression algorithm implemented using gradient descent. The step rate $\alpha$ is calculated using something that correlates to the squared ...
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51 views

Are my HMM calculations going fine? [closed]

I was trying to understand the hidden Markov model (HMM) and to do some calculations, and I got some doubts. I attach my study in this Google Drive File. Can you check if my calculations are fine? I ...
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1answer
45 views

Inconsistency in cross-validation results

I have a set of dataset recorded from subjects as they perform some particular cognitive task. The data consists of 16 channels and a number of sample points per channel and I want to classify this ...
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24 views

Classifying foreground vs background for ellipse shapes

I have images of ellipse shapes which are read in as a matrix of pixel intensities. I'd like a way to be able to classify whether a pixel is foreground (belonging to ellipse) or background (not ...
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45 views

How to solve a dilemma case on Support Vector Machine?

I am learning the SVM classification and especially interested in applying to medical data. Now, I encounter a problem and do not know if this dilemma has a terminology for it. Assume that there ...
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1answer
106 views

Graphical representation of cross-validation errors for regression

What are some good ways of presenting/comparing cross-validated RMSE errors for regression using various models, graphically via plots? As of now, I have been presenting the quantitative results in ...
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1answer
62 views

liblinear one vs rest learn parameters

Liblinear (http://www.csie.ntu.edu.tw/~cjlin/liblinear/) does not support for probability estimates. Say I have three classes C1, C2 and C3. I want to learn the model paramters for each 'one vs rest' ...
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36 views

Generating rules to obtain a given categorical distribution… is it possible?

I'm working on a problem, I was wondering if there are any methods available to do the following. I have a data set with information on people (continuous and categorical data). I have 3 categories ...
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1answer
123 views

Weighted covariance matrix using kernels

I would like to create a weighted covariance matrix (say 5 variables) using 3 different time points where the weights come from a kernel function (can be normal, triangular, etc.) but I'm not ...
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36 views

Is there a theoretical basis for the shrinkage used in Boosted Regression Trees?

In Gradient Boosted Regression Trees, a shrinkage $\nu$ is often applied as: $$ f_t(x) \leftarrow f_{t-1}(x) + \nu h(x)$$ where $h$ is the regression tree learned by fitting the tree to the gradient. ...
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2answers
775 views

how to calculate precision and recall for multiclass classification using confusion matrix?

all, I wonder how to compute the precision and recall using confusion matrix for multi-class classification problem. In specific, one data can only be assigned with most probable class/label. I like ...
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2answers
331 views

What is the difference between a neural network and a deep belief network?

I am getting the impression that when people are referring to a 'deep belief' network that this is basically a neural network but very large. Is this correct or does a deep belief network also imply ...
2
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0answers
49 views

Some examples of errors in ESL?

I am reading the book The Elements of Statistical Learning (Hastie et al, chapter 7) and I am confused about the different kinds of errors mentioned in the book Test error $$Err_\tau=E(L(y, ...
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1answer
129 views

Pocket algorithm for training perceptrons

When you read about perceptron variants at Wikipedia there is explained an algorithm: Pocket Algorithm It is said that: solves the stability problem of perceptron learning by keeping the best ...
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121 views

Data whitening for improving regression

My Data: $X_i= \{0.4;~7;~1,000;0;~0.8;~1;~0;~40;~0.7;~1;~0;~89,100\},~Y_i=345$ The training set size is $\approx35, 000$. $Y$ is the dependent variable and the task is to estimate its value ...
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184 views

Machine Learning Algorithms vs. Linear Regression

Do machine learning algorithms like Boosted Regression Trees (in the R package (gbm)) follow the same statistical assumptions of not including correlated predictor variables in GLM? i.e. If I have ...
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60 views

Forming training set for Multinomial Naive Bayes

Is it true that Multinomial Naive Bayes requires equally by count training data for each class to get best performance? For example, we forming classifier for three classes - Japan, China, Korea. ...

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