Abstract:
The main goal of the study is to investigate the content of news reports on English Language Teaching (ELT) as published by the Bangkok Post Online. Informed by a corpus based investigation of data, a total of 156 news reports on English Language Teaching (ELT), composed of 12187-word types and 209357-word tokens, were downloaded and prepared to be examined using the corpus linguistics software, AntConc 3.5.8 (Anthony, 2019). The findings revealed 71 keywords with log-likelihood values of at least 100 that were dominated by words relating to ELT and education matters (f=31; 43.66%), setting (f=11; 15.49%), ELT and education stakeholders (f=9; 12.68%), ELT and education physical structures and facilities (f=8; 11.27%), government concerns, offices and officials (f=6; 8.45%), production of language (f=5; 7.04%), and financial matters (f=1; 1.41%). These keywords depict the kinds of information presented by the reporters of Bangkok Post Online to their assumed readers. Implications on the use of corpus-assisted analysis in the investigation of ELT big data harnessed online were drawn.
Description:
Proceedings of the 7th National and International Conference on "Research to Serve Society", 12 July 2019 at Huachiew Chalermprakiet University, Bangphli District, Samutprakarn, Thailand. p. 562-570