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4

You may try something like WEKA OpenNLP Standford NLP I guess they are free for educational projects, better make sure license is not an issue for you. Edit: Adding few more (Credit goes to Arun A K) 4) LIBSVM (for SVM) 5) Apache Mahout 6) Java ML Library


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Construct a cell array of images where you can access the image by the particular index from KNN. You don't need to use the actual vector itself. The index can be used as the key instead. Do something like the following: maxIndex = max(IDX); imgCellArray = cell(1, maxIndex); imgCellArray{IDX(1)} = img1; imgCellArray{IDX(2)} = img2; ...


1

The best way to choose a parameter in a classification problem, is to choose it by expertness. What you are doing certainly is not this. If your data is small enough to do a lot of classification with different values of parameters, you will do that, but to be reasonable, you need to show that the parameter you chose is not randomly chosen, you need to ...


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Something to try: double count the non-spam samples in your training data. Say, 500 of the 1000 samples were non-spam. After double counting the non-spam ones you will have a training set of 1500 samples. This might give the false positive test samples more positive nearest neighbours. Note that overall performance might suffer.


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It looks as though you're on the right track. The three steps in your process seem to be correct for the 1-nearest neighbor cases. For kNN, you just need to make a list of the k nearest neighbors and then determine which class is most prevalent in that list. As for features, these are just attributes that define each instance and (hopefully) give us an ...


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I think you are referring to the online documentation, which is for R2014a Release. For earlier versions, KNN is ClassificationKNN. So you should use ClassificationKNN.fit(X, Y) instead.


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I realized that knnreg will receive only numerical values and when I tried to train the model with train1, it considered all values to be numerical (when in fact they are categorical). train2 returns an error because V4 is not numerical, and knnreg can't convert it into numerical either.


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One of the first options that come to my mind is to make a data.frame from a list of vectors, create factor indicator and then use knn from class package. Make a data.frame from a list of vectors Using rbind, make a matrix and then use as.data.frame function (more examples in this question). Assuming that l is a list of vectors: data <- ...



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