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Syuzhet

An R package for the extraction of sentiment and sentiment-based plot arcs from text.

The name "Syuzhet" comes from the Russian Formalists Victor Shklovsky and Vladimir Propp who divided narrative into two components, the "fabula" and the "syuzhet." Syuzhet refers to the "device" or technique of a narrative whereas fabula is the chronological order of events. Syuzhet, therefore, is concerned with the manner in which the elements of the story (fabula) are organized (syuzhet).

The Syuzhet package attempts to reveal the latent structure of narrative by means of sentiment analysis. Instead of detecting shifts in the topic or subject matter of the narrative (as Ben Schmidt has done), the Syuzhet package reveals the emotional shifts that serve as proxies for the narrative movement between conflict and conflict resolution. This was an idea inspired by the late Kurt Vonnegut in an essay titled "Here's a Lesson in Creative Writing" in his collection A Man Without A Country ( Random House, 2007). A lecture Vonnegut gave on this subject is available via youTube

Thanks to Lincoln Mullen for early feedback on this package (see http://rpubs.com/lmullen/58030).

Installation

This package is now available on CRAN (http://cran.r-project.org/web/packages/syuzhet/).

install.packages("syuzhet")

You can install the most current development version from gitHub using the devtools package:

# install.packages("devtools")
devtools::install_github("mjockers/syuzhet")

References

Syuzhet incorporates four sentiment lexicons:

The default "Syuzhet" lexicon was developed in the Nebraska Literary Lab under the direction of Matthew L. Jockers

The "afinn" lexicon was develoepd by Finn Arup Nielsen as the AFINN WORD DATABASE See: See http://www2.imm.dtu.dk/pubdb/views/publication_details.php?id=6010 The AFINN database of words is copyright protected and distributed under "Open Database License (ODbL) v1.0" http://www.opendatacommons.org/licenses/odbl/1.0/ or a similar copyleft license.

The "bing" lexicon was develoepd by Minqing Hu and Bing Liu as the OPINION LEXICON See: http://www.cs.uic.edu/~liub/FBS/sentiment-analysis.html

The "nrc" lexicon was developed by Mohammad, Saif M. and Turney, Peter D. as the NRC EMOTION LEXICON.
See: http://saifmohammad.com/WebPages/lexicons.html The NRC EMOTION LEXICON is released under the following terms of use: Terms of use:

  1. This lexicon can be used freely for research purposes.
  2. The papers listed below provide details of the creation and use of the lexicon. If you use a lexicon, then please cite the associated papers.
  3. If interested in commercial use of the lexicon, send email to the contact.
  4. If you use the lexicon in a product or application, then please credit the authors and NRC appropriately. Also, if you send us an email, we will be thrilled to know about how you have used the lexicon.
  5. National Research Council Canada (NRC) disclaims any responsibility for the use of the lexicon and does not provide technical support. However, the contact listed above will be happy to respond to queries and clarifications.
  6. Rather than redistributing the data, please direct interested parties to this page: http://www.purl.com/net/lexicons

-- Crowdsourcing a Word-Emotion Association Lexicon, Saif Mohammad and Peter Turney, To Appear in Computational Intelligence, Wiley Blackwell Publishing Ltd.

-- Tracking Sentiment in Mail: How Genders Differ on Emotional Axes, Saif Mohammad and Tony Yang, In Proceedings of the ACL 2011 Workshop on ACL 2011 Workshop on Computational Approaches to Subjectivity and Sentiment Analysis (WASSA), June 2011, Portland, OR. Paper (pdf)

-- From Once Upon a Time to Happily Ever After: Tracking Emotions in Novels and Fairy Tales, Saif Mohammad, In Proceedings of the ACL 2011 Workshop on Language Technology for Cultural Heritage, Social Sciences, and Humanities (LaTeCH), June 2011, Portland, OR. Paper

-- Emotions Evoked by Common Words and Phrases: Using Mechanical Turk to Create an Emotion Lexicon", Saif Mohammad and Peter Turney, In Proceedings of the NAACL-HLT 2010 Workshop on Computational Approaches to Analysis and Generation of Emotion in Text, June 2010, LA, California.

Links to the papers are available here: http://www.purl.org/net/NRCemotionlexicon

CONTACT INFORMATION Saif Mohammad Research Officer, National Research Council Canada email: saif.mohammad@nrc-cnrc.gc.ca phone: +1-613-993-0620

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Version

Install

install.packages('syuzhet')

Monthly Downloads

9,255

Version

1.0.4

License

GPL-3

Issues

Pull Requests

Stars

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Maintainer

Last Published

December 14th, 2017

Functions in syuzhet (1.0.4)

get_text_as_string

Load Text from a File
get_tokens

Word Tokenization
get_nrc_values

Summarize NRC Values
get_transformed_values

Fourier Transform and Reverse Transform Values
rescale

Vector Value Rescaling
get_percentage_values

Chunk a Text and Get Means
rescale_x_2

Bi-Directional x and y axis Rescaling
get_sentiment

Get Sentiment Values for a String
get_sentiment_dictionary

Sentiment Dictionaries
get_sent_values

Assigns Sentiment Values
get_sentences

Sentence Tokenization
get_dct_transform

Discrete Cosine Transformation with Reverse Transform.
get_nrc_sentiment

Get Emotions and Valence from NRC Dictionary
simple_plot

Plots simple and rolling shapes overlayed
get_stanford_sentiment

Get Sentiment from the Stanford Tagger