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Repository for R codes and R-generated plots used in the presentation for the Monash Linguistics and Applied Linguistics Seminar Series (S1 2019).

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monash-LAL-SeminarSeries-21May2019

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The repository contains the R codes used in the slides presentation (Rajeg 2019c) for concluding the Monash Linguistics and Applied Linguistics Seminar Series for Semester 1 2019 (21 May 2019) at Monash University, Australia. The topic is about distinctive metaphors for HAPPINESS near-synonyms in Indonesian (cf. Rajeg 2019a: Chapter 7).

The codes mostly document steps in creating the figures (included in this repo) used in the presentation, including the separate code-file for performing Correspondence Analysis for the distinctive metaphors with the synonyms. Also, there are code-chunks for performing Fisher-Yates Exact test for comparing frequency of occurrence of the semantic aspects in the DESIRED GOAL metaphor with kebahagiaan 'happiness' and kesenangan 'pleasure'.

The data come from the happyr R package (Rajeg 2019b) accompanying the PhD thesis (Rajeg 2019a). The other R packages required to run the codes are presented at the top of each code-file.

References

Rajeg, Gede Primahadi Wijaya. 2019a. Metaphorical profiles and near-synonyms: A corpus-based study of Indonesian words for happiness. Clayton, VIC: Monash University, Australia PhD thesis. doi: 10.26180/5cac231a97fb1.

Rajeg, Gede Primahadi Wijaya. 2019b. happyr: The accompanying R package for Rajeg’s (2019) PhD thesis titled “Metaphorical profiles and near-synonyms: A corpus-based study of Indonesian words for Happiness.” R. doi: 10.26180/5be404d6336da.

Rajeg, Gede Primahadi Wijaya. 2019c. Distinctive Metaphors for HAPPINESS near-synonyms in Indonesian: A quantitative corpus-based approach. figshare. doi: 10.26180/5cee3d5529452.