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quanteda (version 1.5.1)

data_dictionary_LSD2015: Lexicoder Sentiment Dictionary (2015)

Description

The 2015 Lexicoder Sentiment Dictionary in quanteda dictionary format.

Usage

data_dictionary_LSD2015

Arguments

Format

A dictionary of four keys containing glob-style pattern matches.

negative

2,858 word patterns indicating negative sentiment

positive

1,709 word patterns indicating positive sentiment

neg_positive

1,721 word patterns indicating a positive word preceded by a negation (used to convey negative sentiment)

neg_negative

2,860 word patterns indicating a negative word preceded by a negation (used to convey positive sentiment)

License and Conditions

The LSD is available for non-commercial academic purposes only. By using data_dictionary_LSD2015, you accept these terms.

Please cite the references below when using the dictionary.

Details

The dictionary consists of 2,858 "negative" sentiment words and 1,709 "positive" sentiment words. A further set of 2,860 and 1,721 negations of negative and positive words, respectively, is also included. While many users will find the non-negation sentiment forms of the LSD adequate for sentiment analysis, Young and Soroka (2012) did find a small, but non-negligible increase in performance when accounting for negations. Users wishing to test this or include the negations are encouraged to subtract negated positive words from the count of positive words, and subtract the negated negative words from the negative count.

Young and Soroka (2012) also suggest the use of a pre-processing script to remove specific cases of some words (i.e., "good bye", or "nobody better", which should not be counted as positive). Pre-processing scripts are available at http://lexicoder.com.

References

The objectives, development and reliability of the dictionary are discussed in detail in Young and Soroka (2012). Please cite this article when using the Lexicoder Sentiment Dictionary and related resources. Young, L. & Soroka, S. (2012). Lexicoder Sentiment Dictionary. Available at http://lexicoder.com.

Young, L. & Soroka, S. (2012). Affective News: The Automated Coding of Sentiment in Political Texts. Political Communication, 29(2), 205--231.

Examples

Run this code
# NOT RUN {
# simple example
txt <- "This aggressive policy will not win friends."
tokens_lookup(tokens(txt), dictionary = data_dictionary_LSD2015, exclusive = FALSE)
## tokens from 1 document.
## text1 :
## [1] "This"   "NEGATIVE"   "policy"   "will"   "NEG_POSITIVE" "POSITIVE" "."

# on larger examples - notice that few negations are used
dfm(data_char_ukimmig2010, dictionary = data_dictionary_LSD2015)
kwic(data_char_ukimmig2010, "not")

# compound neg_negative and neg_positive tokens before creating a dfm object
toks <- tokens_compound(tokens(txt), data_dictionary_LSD2015)

dfm_lookup(dfm(toks), data_dictionary_LSD2015)
# }

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