Machine learning revolves around developing self learning computer algorithms that function by virtue of discovering patterns in data and making intelligent decisions based on such patterns.

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29 views

Is F1 micro the same as Accuracy?

I have tried many examples with F1 micro and Accuracy in scikit-learn and in all of them, I see that F1 micro is the same as Accuracy. Is this always true? Script from sklearn import svm from ...
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1answer
20 views

Creating a Radial basis function kernel matrix in matlab

I never used matlab, and I have this code about kernalized locality sensitive functions. I think that the following code is trying to create the kernalized matrix of a RBF kernel function: %demo ...
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0answers
17 views

Apply a cluster(clustream) on a csv data

I would like to train my cluster(clustream in my case) on a specific csv data and then test it on a diffrent csv test data. here is my code: library("stream") library("streamMOA") library("RMOA") ...
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2answers
51 views

Feature selection by genetic algorithm

I would like to explore feature selection using genetic algorithm, particularly areas of image processing, i.e. image recognition, fingerprint matching, edge detection, OCR etc. My questions are: ...
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1answer
51 views

Add meaning to values in an object

Is it possible to utilize the third column in the following example, to kind of "spread out"/unravel the values in e.g. a Pandas DataFrame in Python without actually duplicating the rows? So If we ...
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0answers
27 views

is there any SIFT keypoints package for image matching in R? [closed]

Hey guys I'm creating a machine learning project to learn from written words and now I'm doing feature extraction. I have extrected many features and one i would like to do is to use k-means to ...
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3answers
45 views

Difference between parameters, features and class in Machine Learning

I am a newbie in Machine learning and Natural language processing. I am always confused between what are those three terms? From my understanding: class: The various categories our model output. ...
2
votes
1answer
36 views

numpy: is matrix multiplication faster than sum of a vector?

I am implementing liner regression in python, using numpy. My implementation of the square cost function looks like this square_cost(w, datax, datay): ndata = datax.shape[1] return ...
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1answer
40 views

Get test error in a logistic regression model in R

I'm performing some experiments with logistic regression in R with the Auto dataset included in R. I've get the training part (80%) and the test part (20%) normalizing each part individually. I can ...
0
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1answer
44 views

Using PCA to pick predictors for Arima Model

I'm trying to use PCA to pick good predictors to use in the xreg argument of an arima model to try to forecast the tVar variable below. I am just using the reduced dataset below with just a few ...
0
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1answer
14 views

Which is the most efficient framework for Semantic Analysis in Machine Learning? [closed]

My product is made in Python and I need Semantic Analysis for classification of sentences into questions, complaints, etc. Which is the best framework for the same?
3
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1answer
40 views

Gradient descent vectorised computation dimensions not correct

I have 1 input layer, 2 hidden layers and 1 output layer and for a single training example x with output y I have computed following : x = [1;0;1]; y = [1;1;1]; theta1 = 4.7300 ...
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1answer
19 views

Predictive analysis of future sales using historical data

I do descriptive analytics and reporting at a company that sells a wide range of products. We record sales transactions and everytime an item is sold, the following is recorded: Customer ID (each ...
2
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2answers
65 views

What type of machine learning algorithm is more suitable for predicting next destination of a ship based on previous visits?

I'm looking at machine learning algorithms in order to investigate which category of algorithms are more appropriate for this type of problem. Problem: There are history of ship voyages available ...
0
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1answer
25 views

Naive Bayes Algorithm [closed]

I found this very helpful video discussing naive bayes classification. I noticed he calculates the probability of a document being positive and not the probability of a word being positive. Is this ...
3
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2answers
2k views

How to use multi CPU cores to train NNs using caffe and OpenBLAS

I am learning deep learning recently and my friend recommended me caffe. After install it with OpenBLAS, I followed the tutorial, MNIST task in the doc. But later I found it was super slow and only ...
0
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1answer
47 views

OpenCV - Fixing foreground in Background subtractor MOG

How can we fix foreground using mog background subtractor in opencv-python? I'm trying to have a more stable foreground that can keep showing foreground once it could correctly subtract foreground ...
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1answer
33 views

What is the default variable initializer in Tensorflow?

What is the default method of variable initialization used when tf.get_variable() is called without any specification for the initializer? The Docs just says 'None'.
1
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1answer
22 views

Handle Missing attributes in SVM

I have a dataset of 2500 records. Each record has 100 attributes. The issue I'm facing is that many of these records have one (or multiple) attribute values missing. Since such records are large in ...
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1answer
34 views

Dimension reduction Using PCA while preserving variance in percentage

i am trying to reduce the dimensions of MNIST dataset using PCA. Trick is, i have to preserve the certain percentage of variance(say 80%) while reducing the dimension. I am using Scikit learn. I am ...
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0answers
15 views

Tuning Probabilistic Threshold - Random Forest (scikit-learn)

I changed the probabilistic threshold of my RF classifier to achieve a higher F1-Score. I wanted to tune this parameter but realised that provided methods as GridSearch or RandomizedSearchCV by scikit ...
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0answers
20 views

Training an SVM in R

I am trying to train an SVM model using Forest Fire data. I split up my data into a test and training set. I am not sure of the syntax to address the variables "day" and "month". They are categorical ...
1
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2answers
39 views

Machine learning models for predicting when some event will occur

Consider the problem where I need to predict when a particular event is going to occur based on the past data (data available with time stamp) available. For example Assume a particular machine is ...
19
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6answers
17k views

Tutorials For Natural Language Processing [closed]

I recently attended a class on coursera about "Natural Language Processing" and I learnt a lot about parsing, IR and other interesting aspects like Q&A etc. though I grasped the concepts well but ...
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2answers
65 views

How do i take a trained neural network and implement in another system?

I have trained a feedforward neural network in Matlab. Now I have to implement this neural network in C language (or simulate the model in Matlab using mathematical equations, without using direct ...
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votes
1answer
20 views

Why this errror appears during fit while creating decision Tree Classifier

Hi I am trying Decision Tree Classifier by following this video Hello World - Machine Learning Recipes #1 Google Developers. Here is my Code. #Import the Pandas library import pandas as pd #Load ...
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0answers
20 views

(series is not periodic or has less than two periods) error in Execute R Script azure ml

I have 5 months records (ex: 50 records),but Azure needs to access more then 104 records from (Execute R Script). when i try to predict next weak sales data from (Execute R Script) in azure ml, i get ...
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1answer
38 views

Loading Mllib models outside Spark

I'm training a model in spark with mllib and saving it: val model = SVMWithSGD.train(training, numIterations) model.save(sc, "~/model") but I'm having trouble loading it from a java app without ...
2
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0answers
28 views

Detecting reflection on objects or curved images inside images

I need to detect reflection on objects (i.e. on a car) or an curved image inside another image. Does anybody know how to do that? Some examples of what I'm looking for: Also, I don't need to ...
3
votes
1answer
11k views

How to use SVM in Matlab?

I am new to Matlab. Is there any sample code for classifying some data (with 41 features) with a SVM and then visualize the result? I want to classify a data set (which has five classes) using the SVM ...
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0answers
27 views

How do you load an LMDB file into TensorFlow?

I have a large (1 TB) set of data split over about 3,000 CSV files. My plan is to convert it to one large LMDB file so it can be read quickly for training a neural network. However, I have not been ...
0
votes
2answers
21 views

Output error from grid.py of libsvm

I just used the demo data heart_scale from libsvm to test the grid.py, but unfortunately, it always output the same error like this: Traceback (most recent call last): File "grid.py", line 266, in ...
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0answers
26 views

How to load a sparse dataset into XGBoost in Python?

I have a very large sparse dataset with english feature names, as shown below. How do I load this into XGBoost for training a model ? Based on what I have tried till now, XGBoost can only accept ...
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0answers
17 views

Meansurements of CEDD + FCTH + SURF + Tamura + Haralick results

How can I measure an average of all metrics together? For exemple: Assume that we have the following values: To each image, we have values to features extrated, and the below numbers are Euclidian ...
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1answer
85 views

Can someone explain this piece of code that recognises a digit from the Coursera Machine Learning course

This is a snippet from the predict function of exercise 4 of the Coursera machine learning course. What it does is it stores the predicted digit from a trained neural network in p. Can someone explain ...
0
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1answer
27 views

Improvements of Random Search for Hyperparameter Optimization

Random search is one possibility for hyperparameter optimization in machine learning. I have applied random search to search for the best hyperparameters of a SVM classifier with a RBF kernel. ...
0
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1answer
35 views

Best feature for classifying images based on greenness

I want to classify several green images based on their "green-ness". I have train data where image names are ranked to different classes, say-1,2,3 etc. Now I have given a set of test images to ...
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0answers
42 views

How do I determine the training “accuracy” for a TensorFlow network with dropout?

I'm aware that "accuracy" isn't what measured against the training set for a neural network during training, but I'd like to know, essentially what would happen if I stop trianing now and try to ...
0
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1answer
23 views

Should I remove stopwords when feed sentence to RNN

In bag-of-words model, I know we should remove stopwords and punctuation before training. But in RNN model, if I want to do text classification, should I remove stopwords too ?
2
votes
1answer
134 views

SPARK ML, Naive Bayes classifier: high probability prediction for one class

Hi I am using Spark ML to optimise a Naive Bayes multi-class classifier. I have about 300 categories and I am classifying text documents. The training set is balanced enough and there is about 300 ...
2
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0answers
44 views

Spark Random Forests: Different results with same seed

When running Spark's RandomForest algorithm, I seem to get different splits in the trees on different runs even when using the same seed. Could anyone kindly explain if I am doing something wrong ...
3
votes
1answer
54 views

Is it possible to add a covariate (control for a variable of no interest) to an SVM model?

I'm very new to machine learning and python and I'm trying to build a model to predict patients (N=200) vs controls (N=200) form structural neuroimaging data. After the initial preprocessing were I ...
1
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1answer
20 views

GPU computing: how much VRAM do I need for mini batch gradient descent?

I want to do some GPU computing with an NVIDIA card, and am deciding between having a GTX 960 with a 2GB or 4GB ram. Which one should I take? How much difference would these make in terms of the batch ...
269
votes
4answers
195k views

A simple explanation of Naive Bayes Classification

I am finding it hard to understand the process of Naive Bayes, and I was wondering if someone could explained it with a simple step by step process in English. I understand it takes comparisons by ...
0
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0answers
11 views

C cross compiler for ARM to iOS, Android, and Win10?

Does something like this exist? I'm looking at running my R and Python code through something that converts it to C, then I want to compile that down for each platform. Anybody know if something can ...
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votes
0answers
24 views

Sensor data classification and machine learning

I am developing project in which have sensor network, some of them are wire connected, some of them are wireless and all the data is collected on the main server. The main part of the software is ...
-1
votes
0answers
20 views

How can i group by my data with R? [duplicate]

The data like this : a 1 a 2 a 3 b 1 b 2 i want transform into : a 1 2 3 b 1 2 Every record like a list,the length is not explicit. How can i do this with R,or use a ...
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1answer
31 views

What is the difference between Apache Mahout and PredictionIO?

What are the differences in their usage and the main reason for development of PredictionIO?
8
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2answers
3k views

Numpy 1-hot array

Let's say I have a 1d numpy array a=[1,0,3] I would like to encode this as a 2d 1-hot array b=[[0,1,0,0], [1,0,0,0], [0,0,0,1]] Is there a quick way to do this? Quicker than just looping over ...
0
votes
1answer
45 views

skflow.TensorFlowDNNRegressor parameters

I am new to skflow. With the following example code, I am able to initialize a neural network estimator. regressor = skflow.TensorFlowDNNRegressor( hidden_units=[10, 10], steps=5000, ...