I'd like to apply
polarity function to a vector of documents, each of which could contain multiple sentences, and obtain the corresponding polarity for each document. For example:
library(qdap) polarity(DATA$state)$all$polarity # Results:  -0.8165 -0.4082 0.0000 -0.8944 0.0000 0.0000 0.0000 -0.5774 0.0000  0.4082 0.0000 Warning message: In polarity(DATA$state) : Some rows contain double punctuation. Suggested use of `sentSplit` function.
This warning can't be ignored, as it seems to add the polarity scores of each sentence in the document. This can result in document-level polarity scores outside the [-1, 1] bounds.
I'm aware of the option to first run
sentSplit and then average across the sentences, perhaps weighting polarity by word count, but this is (1) inefficient (takes roughly 4x as long as running on the full documents with the warning), and (2) unclear how to weight sentences. This option would look something like this:
DATA$id <- seq(nrow(DATA)) # For identifying and aggregating documents sentences <- sentSplit(DATA, "state") library(data.table) # For aggregation pol.dt <- data.table(polarity(sentences$state)$all) pol.dt[, id := sentences$id] document.polarity <- pol.dt[, sum(polarity * wc) / sum(wc), "id"]
I was hoping I could run
polarity on a version of the vector with periods removed, but it seems that
sentSplit does more than that. This works on
DATA but not on other sets of text (I'm unsure of the full set of breaks other than periods).
So, I suspect the best way of approaching this is to make each element of the document vector look like one long sentence. How would I do this, or is there another way?