# Tag Info

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There are differences between these two functions w/r/t the function parameters (what you can/must pass in when you call the function); the values returned by each; and the numerical technique used by each to calculate principal components. Numerical Technique Used to Calculate PCA In particular, princomp should be a lot faster (and the performance ...

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The two questions in the OP are separate topics (i.e., no overlap in the answers), so I'll try to answer them one at a time staring with item 1 on the list. How would I determine if my [clustering] algorithms works correctly? k-means, like other unsupervised ML techniques, lacks a good selection of diagnostic tests to answer questions like "are the ...

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Since you don't employ any part of labelled data you are applying an unsupervised method by definition. "How can I then label the clusters (given that I have a comparison pattern)?" You can try different perturbations of the label-set and keep the one the minimizes the average error (or accuracy) on the comparison pattern. With clustering, you can ...

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A topic is quite different from a cluster of docs, after all, a topic is not composed of docs. However, these two techniques are indeed related. I believe Topic Modeling is a viable way of deciding how similar documents are, hence a viable way for document clustering. In representing each document as a topic distribution (actually a vector), topic ...

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OK, if you have 1, 2, 3 in that sets in the order, then you have the formula to compute proximity: prox = indexOf 3 - indexOf 1 - 2. So, prox is amount total of zeroes between 1..2 and 2..3. You may write in Haskell: prox :: [Integer] -> Int prox s = i3 - i1 - 2 where Just i3 = findIndex (==3) s Just i1 = findIndex (==1) s You may generalize ...

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There has been a lot of recent emphasis on non-parametric HMMs, extensions to infinite state spaces, as well as factorial models, explaining an observation using a set of factors rather than a single mixture component. Here are some interesting papers to start with (just google the paper names): "Beam Sampling for the Infinite Hidden Markov Model" "The ...

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Classification, Clustering and grouping are well developed areas of IR. There is a very good (Java) library/software (open source) here Called WEKA. There are several algorithms for clustering there. Although there is a learning curve, it might useful when you encounter harder problems.

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There's a very nice Python implementation of K-means clustering in "Programming Collective Intelligence". I highly recommend it. I realize that you'll have to translate to Java, but it doesn't look to be too difficult.

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I'm working on a project with Clustering and I'm having the same question so far. Right now I'm using the JavaML library which has built-in several clustering algorithms (in my case I'm using K-means) and this library also has several functions to evaluate this algorithms. The function I'm using to evaluate the 'quality' of my clusters is the sum of the ...

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You can always use this trick to have numeric columns numcol <- as.numeric(as.character(factcol)) But I suspect that you have factor variable in your data.frame. Since apply return a matrix, if you have one factor in your data, all the numeric variable will be coerced to factor too. Here is an example, using toy dataset set.seed(123) toydat <- ...

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I think you're summing the wrong values. This is your code that is supposed to compute the sum of the log probs: #Compute log-likelihood #NLTK Naive bayes classifier prob_classify func gives logprob(class) + logprob(doc|class)) #for labeled data, sum logprobs output by the classifier for the label #for unlabeled data, sum logprobs output by the ...

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One option would be to divide your data into two groups: points that are part of a cluster with degree of belonging >= X, and those less than X. Call the points with degree of belonging >= X the crisp groups. For those less than X you would make groups for each of your different clusters, call these the fuzzy groups. Every fuzzy group would have all of ...

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I think that hierarchical clustering algorithms will meet your needs. Cluster consistency is garanteed for the same set, probability that items iJ and iK would end up in the same cluster is 1. There is no seed. You choose the right number of cluster by analysing the tree, or using existing cut off algorithms (there are a LOT of them). [EDIT] In fact ...

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A often-seen strategy to make an algorithm more robust with respect to initialization, is to bootstrap it. See for instance this paper. The other option is to sort the data beforehand and use a strictly deterministic algorithm.

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How much memory does your computer have? What sklearn might be doing here (I haven't gone through the source, so I might be wrong) is calculating euclidean lengths of vectors between each data point by taking the square of a 17000xK matrix. This would yield squared euclidean distance for all data points, but unfortunately produces an NxN ouput matrix if you ...

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Since I've never built any recommender system - do not take this answer very seriously (no-one has answered it, so I try) recommendation system has to be built on some already known (or partially known data). If you have only new (unseen) data there is only possibility to use some clustering algorithm in order to build some clusters. And if those clusters ...

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You don't have many options on this with SOM. The only think you could consider is whether you will do batch or sequential training, if of course the implementation that you will use offers both options. But this option mainly affects the training time (the first is much more quicker) and not the resulting map (in theory at least). You could also select a ...

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Take a look at GraphViz http://www.graphviz.org/Gallery/directed/cluster.html There's a Python binding for that, but I have to say I always create the text files directly as they're easy enough to write. Don't be fooled by the plain-looking examples, every aspect of your graph is highly customizable and you can make some pretty nifty graph visualizations ...

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Concerning linear successions, you can try to make a pre-set patterns and try to recognize them. The common patterns are arithm./geom. progressions, Fibonacci, something like a(n) = (n - n1)(n - n2) (you can see this in 2, 6, 12, 20 succession) etc. So you can define an equations by yourself to check if the succession fits the pattern. For example, in the ...

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Basically, you're trying to fit numbers into the set of all equations with some number of variables, which is infinite and probably not countable (thus probably not too easy to iterate through). Though I'm sure there has been research on exactly the problem you're trying to solve, but I'll give my take. While greatly problem dependent, I suspect what ...

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Could this video be of any help? It doesn't answer your question but it shows that human interaction may be required to even select number of clusters. Automatically labeling clusters is even harder. If you think about it there's no guarantee that clustering will be done based on the depicted number. Network might group digits based on width of the line or ...

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Did you check the documentation: doc kmeans? There they use the term initial cluster centroid positions to refer to seeds. In particular, look at the parameter named start which is used to specify the seeds, and the replicates parameter. Also see the Algorithms section, where they discuss the two phases of the process (batch update and online update). ...

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Jison docs would be a good place to start. A breakdown of how it's used to build a parser for CoffeeScript may be helpful in seeing the big picture.

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Adaptive Resonance Theory is the short answer to your question. Unlike KMeans you dont need to set the number of clusters in advance. The input is a set of feature vectors either binary (ART 1 Algorithm) or continuous (ART -2A, ARTMAP etc.) and the output is classification of documents in clusters.

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Normally clustering is used as a unsupervised and semi-supervised learning algorithm. Since your have mentioned “However after training and then testing I may get say MySQL,…..” I assume that you are using a semi-supervised clustering algorithm for your application. You can increase the number of input features (or probably do several experiments while ...

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Unsupervised POS tagging is a very interesting emerging research topic. If I understand correctly, you are actually asking how to evaluate your tagging accuracy, not how to debug the code. Evaluation is a known issue in unsupervised POS induction. The short answer to your question is: get this annotated corpus from NLTK, then map your states to the corpus ...

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Can't you just try sum |xi - yi| instead if (xi - yi)^2 in your code, and see if it makes much difference ? I can't have a graph which will give some idea about the correctness of my algorithm. A couple of possibilities: look at some points midway between 2 clusters in detail vary k a bit, see what happens (what is your k ?) use PCA to map 30d down ...

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Very old question but I noticed there is no mention of the Java Machine Learning Library which has an implementation of K-Means and includes some documentation about it's usage. The project is not very active but the last version is relatively recent (July 2012)

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