Abstract:
This paper investigates the application of machine translation within the context of a
specific, narrow topic: the Conference of the Parties (COP), relevant to climate change and
international relations. This research is significant for my current academic focus and
future career, motivated by curiosity about the potential utility of machine translation tools
for the general public.
The scope of this study is highly focused, as few existing studies compare multiple
machine translation tools - most often only one or two are analyzed. Additionally, previous
research predominantly relies on statistical and automated scoring methods using various
metrics. Despite the widespread recognition of climate change, the specific relationship
between COP terminology and its connection to climate issues and United Nations official
language remains underexplored.
The primary methodology employed is a qualitative assessment of machine translations
generated by ChatGPT, Google Translate, and DeepL. These translations were analyzed by
the author with the assistance of human translators, with evaluations based on four criteria:
accuracy, readability, terminology consistency, and post-editing effort. Post-editing refers
to the time and effort required to adapt machine-translated output to an acceptable
standard, which may involve correcting errors or performing a comprehensive review, as
conducted in this study.
The findings indicate that DeepL and ChatGPT provide sufficiently accurate translations -
neither perfect nor exceptional, but quite convenient and generally reliable. The
translations are adequate but require additional editing time to reach a satisfactory quality
for users. No machine translation tool is flawless or ideal. Given that current tools largely
rely on statistical algorithms rather than advanced machine learning or AI, it is anticipated
that future developments will improve translation quality. Further research is necessary to
explore emerging tools, as the landscape of machine translation is rapidly evolving and
remains underexplored.