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15

Here's a blog post which does just that: http://peekaboo-vision.blogspot.com/2012/11/a-wordcloud-in-python.html The whole code is here: https://github.com/amueller/word_cloud


14

EDIT: As described in the comments, the feature described below has now been added to the wordcloud library. My approach was to take the R function's code and customize it. It required changing only a few lines, and can now take either a single color or a vector of colors of the same length as words. library(wordcloud) colored.wordcloud <- ...


12

Actually OpenCloud does not require a Web server. Simply use Swing rendering instead of HTML/JSP. Here is a small snippet illustrating a very basic Swing tag cloud using OpenCloud library. It can be improved, but it gives you the gist: import java.util.Random; import javax.swing.JFrame; import javax.swing.JLabel; import javax.swing.JPanel; import ...


11

Try using the res parameter, instead: ... png("wordcloud_packages.png", width=12,height=8, units='in', res=300) ...


10

Try d3.zip: d3.zip(jWord, jCount) returns a merged array where the first element is the text and size of the first word [jWord[0], jCount[0]], the second element is the second word, and so on. For example: .words(d3.zip(jWord, jCount).map(function(d) { return {text: d[0], size: d[1]}; })) In effect, d3.zip turns column-oriented data into row-oriented ...


9

You are sorting the tags in ascending order instead of descending, as probably pytagcloud expects. You should change the sorting line to: sorted_wordscount = sorted(wordscount.iteritems(), key=operator.itemgetter(1),reverse=True) Once that is fixed, the key parameter is maxsize in make_tags : create_tag_image(make_tags(sorted_wordscount[:],maxsize=200), ...


7

Why does it have to be a Ruby/Rails library? You could use JQCloud, which is a nice JQuery plugin to build word and tag clouds.


6

This may be a pipe dream, and it certainly isn't easy to re-use the wordcloud code: As Ian Fellows points out in a comment, the wordcloud code calculates word sizes and positions in base graphics. A geom-aware modification of the code needs to be aware of facets. In terms of making it work, a framework for designing a solution might be: Rewrite ...


6

The wordcloud() function fills the entire plot. That means you need to reserve space on your graphics device for the title before plotting. Since wordcloud make use of base grapics, you can do this with either par(mfrow=...) or layout(). Then create the plot title with text(). I illustrate with layout(), adapting the example in ?wordcloud: library(tm) ...


5

You can convert your tdm object into a matrix and work with that to get something that wordcloud can work with: library(tm) library(wordcloud) # example data from the tm package data(crude) tdm <- TermDocumentMatrix(crude, control = list(removePunctuation = TRUE, stopwords = TRUE)) v <- ...


5

It shouldn't be that difficult to adapt the code in wordcloud to construct the data need to fill in a text.grob in grid. The wordcloud code sends x, y, text and rot values to the base text function after a window with limits of 0,0 and 1, 1 is specified. I needed to add this before the for-loop: textmat <- data.frame(x1=rep(NA, length(words)), y1=NA, ...


4

Sadly I think you're going to find the short answer is no! I think the package handles the text vector mapping differently from ggplot2, so you can tinker with size and font face/family, etc. but will struggle to replicate exactly what the package is doing. I tried a few things: 1) Try to plot the grobs from textdata using annotation_custom require(plyr) ...


4

d3.csv is an asynchronous call. That means that it doesn't return anything, you have to process the data in the callback. I've done that (and fixed a few other things) here. I've also limited the font sizes to be between 8 and 24 as the values in your data are rather large.


4

In case you require these word clouds for showing them in website or web app you can convert your data to json or csv format and load it to a JavaScript visualisation library such as d3. Word Clouds on d3 If not, Marcin's answer is a good way for doing what you describe.


4

Your difficulty is that each element of df$names is being treated as "document" by the functions of tm. For example, the document John A contains the words John and A. It sounds like you want to keep the names as is, and just count up their occurrence - you can just use table for that. library(wordcloud) df<-data.frame(theNames=c("John", "John", "Joseph ...


3

Good question. You can specify non-random color assignment (random.color = FALSE) which will make it based on frequency then choose a value of colors using a palette that goes in the order you prefer. For example, if colors = "black", which is the default/example in the Vignette is the opposite of what you want, then choose colors = "Pastel" or some other ...


3

Found the solution. I was not using the rotate() function call as i want text to be horizontally placed. i thought leaving out the call entirely would help. appears not to be the case. so i add rotate (0) and that's it. now i get a good-looking word cloud. TIP: i use stroke: black against text styles and this gives a neat presentation.


3

One idea is to import the images , and save again them using grid.raster, and add the titile using grid.text. For example: ll <- list.files(patt='*.png') library(png) library(grid) imgs <- lapply(ll,function(x){ img <- as.raster(readPNG(x)) ## get the file name x.name <- gsub('(.*).png','\\1',x) ## new device for new image version ...


3

EDIT: While the TAG_PADDING parameter referenced below in my answer might be of interest for some cases, vinaut's answer is clearly the better one to start with. Looking at https://github.com/atizo/PyTagCloud/blob/master/pytagcloud/__init__.py, it looks like TAG_PADDING might be the parameter that controls the spacing between words. Because it's set to a ...


3

That is an error we are getting with the newest Rcpp (which uses a different initialization scheme and no user-facing library). Make sure you have the current version of Rcpp and a current / rebuilt version of wordcloud. On my system, with a fresh install of wordcloud, it all works fine: R> library(wordcloud) Loading required package: Rcpp Loading ...


3

You didn't provide data some something like this should work: data("crude") tdm <- TermDocumentMatrix(crude) x <- as.matrix(tdm)[, 1:2] x[rowSums(apply(x, 2, ">", 1)) == 2, ] Explanation: The line x <- as.matrix(tdm)[, 1:2] just getting 2 columns like your data so it doesn't do anything but needed to make data that looked like yours since you ...


3

The coordinates of the words in the cloud are computed assuming that the center of the cloud is at (0,0). This is not the case with SVGs, so there's a g element below the top-level SVG that has the appropriate coordinate system translation applied. When changing the size of the word cloud, you need to change this as well. In your case, the size of the word ...


3

cex stands for character expansion and is the factor by which text is magnified relative the default, specified by cin - set on my installation to 0.15 in by 0.2 in: see ?par for more details. @hadley explains that ggplot2 sizes are measured in mm. Therefore cex=1 would correspond to size=3.81 or size=5.08 depending on if it is being scaled by the width or ...


2

Use Pivot Faceting available in Solr 4.X releases. Pivot faceting allows you to facet within the results of the parent facet. Generate Shingled token for "text" field at indexing time using Shingle Filter Factory. For faceting add facet=true&facet.pivot=publisherid,text parameters in your query. Sample query: ...


2

I'm not sure about how to do it with matplotlib but I have used this in the past: http://peekaboo-vision.blogspot.co.uk/2012/11/a-wordcloud-in-python.html


2

You asked two questions: You can control the capitalisation (or not) by specifying a control argument to TermDocumentMatrix No doubt there is an argument somewhere to control the ~, but here is an easy workaround: Use gsub to change ~ to white space in the step just before plotting. Some code: corpus <- Corpus(VectorSource(y)) tdm <- ...


2

This isn't a really hard problem. Essentially a tag cloud is just a way of linking the fontsize to the how common the tag is. First thing is how often does the tag appear: select Value, Count(*) from Tag group by Value order by Count(*) Then when you render this resultset to the page, have some sort of algorithm to take the count for each tag and ...


2

Another brilliant solution provided by Victorp in the comments section is to use the following as color argument: colors=rev(colorRampPalette(brewer.pal(9,"Blues"))(32)[seq(8,32,6)])


2

Install RWeka and its dependencies, then try this: library(RWeka) BigramTokenizer <- function(x) NGramTokenizer(x, Weka_control(min = 2, max = 2)) # ... other tokenizers tok <- BigramTokenizer tdmgram <- TermDocumentMatrix(df.corpus, control = list(tokenize = tok)) #... create wordcloud The tokenizer-line above chops your text into phrases of ...


2

I ended up asking Jason Davies himself and it was actually a pretty simple mistake: You have to specify the text accessor function in the first statement (not only in the "draw" function). It works if you add one line like this: d3.layout.cloud().size([300, 300]) .words(data) .padding(1) .rotate(function(d) { return 0; }) // .font("Impact") ...



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