Skip to content

R package providing annotators and a tidy data model for natural language processing

Notifications You must be signed in to change notification settings

dselivanov/cleanNLP

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

30 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Installation

The cleanNLP package is designed to make it as painless as possible to turn raw text into feature-rich data frames. You can download the package from within R, either directly from CRAN:

install.packages("cleanNLP")

Or you may grab the development version using devtools:

devtools::install_github("statsmaths/cleanNLP")

As described in detail below, the package has a bare-bones parser that does not require any additional system dependencies. However, to benefit from the package most users will want to load either a Python or Java backend. The Python backend uses the spaCy module, which can be installed by running the following in a terminal:

pip install -U spacy
python -m spacy download en

Further instructions are available at spacy.io.

Basic usage

The cleanNLP package is designed to make it as painless as possible to turn raw text into feature-rich data frames. Take for example the opening lines of Douglas Adam's Life, the Universe and Everything:

text <- c("The regular early morning yell of horror was the sound of",
          "Arthur Dent waking up and suddenly remembering where he",
          "was. It wasn't just that the cave was cold, it wasn't just",
          "that it was damp and smelly. It was the fact that the cave",
          "was in the middle of Islington and there wasn't a bus due",
          "for two million years.")
text <- paste(text, collapse = " ")

A minimal working example of using cleanNLP consists of loading the package, setting up the NLP backend, initalizing the backend, and running the function annotate. Because our input is a text string we set as_strings to TRUE (the default is to assume that we are giving the function paths to where the input data sits on the local machine"):

library(cleanNLP)
init_spaCy()
obj <- annotate(text, as_strings = TRUE)

Here, we used the spaCy backend. A discussion of the various backend that are available are given the following section. The returned annotation object is nothing more than a list of data frames (and one matrix), similar to a set of tables within a database. The names of these tables are:

names(obj)
## [1] "coreference" "dependency"  "document"    "entity"      "sentence"
## [6] "token"       "vector"

The canonical way of accessing these data frames is by using functions of the form get_TABLE. For example, the document table gives metadata about each document in the corpus, which here consists of only a single document:

get_document(obj)
## # A tibble: 1 × 5
##      id                time version language
##   <int>              <dttm>   <chr>    <chr>
## 1     0 2017-04-01 17:54:28     1.2      n/a
## # ... with 1 more variables: uri <chr>

The tokens table has one row for each word in the input text, giving data about each word such as its lemmatized form and its part of speech. We access these table with the get_token function:

get_token(obj)
## # A tibble: 71 × 8
##       id   sid   tid    word   lemma  upos   pos   cid
##    <int> <int> <int>   <chr>   <chr> <chr> <chr> <int>
## 1      0     0     0    ROOT    ROOT  <NA>  <NA>    NA
## 2      0     0     1     The     the   DET    DT     0
## 3      0     0     2 regular regular   ADJ    JJ     4
## 4      0     0     3   early   early   ADJ    JJ    12
## 5      0     0     4 morning morning  NOUN    NN    18
## 6      0     0     5    yell    yell  NOUN    NN    26
## 7      0     0     6      of      of   ADP    IN    31
## 8      0     0     7  horror  horror  NOUN    NN    34
## 9      0     0     8     was      be  VERB   VBD    41
## 10     0     0     9     the     the   DET    DT    45
## # ... with 61 more rows

The output from the get functions are (mostly) pre-calculated. All of the hard work is done in the annotate function.

Backends

There are three "backends" for parsing text in cleanNLP. These are:

  • an R-based version using only the tokenizers package. It offers minimal output but requires no external dependencies.
  • a Python-based parser using the spaCy library. Requires installing Python and the library separately; this is generally pain free and works with any version of Python >= 2.7. The library is very fast and provides the basic annotators for parsing text such as lemmatization, part of speech tagging, dependency parsing, and named entity recognition. There is also support for computing word embeddings in English.
  • a Java-based parser using the CoreNLP library. Setting this up is often more involved and the data files are quite large. The pipeline also takes significantly longer than the spaCy implementation. However, the CoreNLP parser offers many more bleeding-edge annotation tasks such as coreference resolution and speaker detection.

The only benefit of the R-based version is its lack of external dependencies. We supply it mainly for testing and teaching purposes when access to the machine(s) running the code are not under our control. For most use-cases we recommend using the spaCy library as it strikes a balance between features, speed, and ease of set-up. The CoreNLP backend should be used when access to the advanced annotation tasks is required or when parsing in languages not yet available in spaCy.

spaCy backend (python)

To use the Python-based backend spaCy, we first need to install Python and spaCy on our system. The package reticulate must also be installed; see the spaCy website for download instructions on your platform. After this is done, we can run the code snippet given in the prior section

coreNLP backend (Java)

In order to make use of the Java-based coreNLP backend, a version of Java >= 7.0 must be installed and the rJava package must be set up. This should be straightforward, but this has caused problems on some machines, particularly with macOS. For help, see the GitHub issues tracker. Once these system requirements are met, we can install the ".jar" files with

download_core_nlp()

These files are large and may take several minutes to download. The Java backend is then configured with setup_coreNLP_backend. The easiest interface is to specify a speed code from 0 to 3, with higher numbers including more models but taking increasingly long to parse the text. Setting it equal to 2 is a good balance between time and feature-richness:

init_coreNLP(speed = 2L, lib_location = lib_loc)

After the pipeline is loaded, we again call annotate and set the backend to "coreNLP" (by default annotate will use whichever backend for most recently initalized, so this option is technically not needed if you just ran init_coreNLP):

obj <- annotate(text, as_strings = TRUE, backend = "coreNLP")
obj
##
## A CleanNLP Annotation:
##   num. documents: 1

The annotation object contains the same tables as the spaCy models, with slightly different fields filled in.

Saving annotations

Once an annotation object is created there are two ways of saving the output. Using saveRDS saves the output as a binary file which can be read back into R at any time. Alternatively, the function write_annotation saves the annotation as a collection of comma separated files:

od <- tempfile()
write_annotation(obj, od)
dir(od)
[1] "dependency.csv" "document.csv"   "entity.csv"     "token.csv"
[5] "vector.csv"

Notice that only those tables that are non-empty are saved. These may be read back into R as an annotation object using read_annotation:

anno <- read_annotation(od)

Alternatively, as these are just comma separated values, the data may be read directly using read.csv in R or whatever other programming language or software a user would like to work with.

More information

This document is meant just to get users up to speed enough to starting being useful with the coreNLP package. There are many more options and helper functions available to make working with textual data as easy as working with tabular datasets. For a full example of using the package to do an analysis of a corpus see the vignette:

For more detailed information about the fields in each of the tables, users can consult the help pages for the get_ functions. An even more detailed guide to the fields and the underlying philosophy is given in the vignette

About

R package providing annotators and a tidy data model for natural language processing

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • R 76.0%
  • Java 19.1%
  • Python 4.9%