Title of article :
Choosing words in computer-generated weather forecasts Original Research Article
Author/Authors :
Ehud Reiter، نويسنده , , Somayajulu Sripada، نويسنده , , Jim Hunter، نويسنده , , Jin Yu، نويسنده , , Ian Davy، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2005
Abstract :
One of the main challenges in automatically generating textual weather forecasts is choosing appropriate English words to communicate numeric weather data. A corpus-based analysis of how humans write forecasts showed that there were major differences in how individual writers performed this task, that is, in how they translated data into words. These differences included both different preferences between potential near-synonyms that could be used to express information, and also differences in the meanings that individual writers associated with specific words. Because we thought these differences could confuse readers, we built our SumTime-Mousam weather-forecast generator to use consistent data-to-word rules, which avoided words which were only used by a few people, and words which were interpreted differently by different people. An evaluation by forecast users suggested that they preferred SumTime-Mousamʹs texts to human-generated texts, in part because of better word choice; this may be the first time that an evaluation has shown that nlg texts are better than human-authored texts.
Keywords :
Lexical choice , Idiolect , Natural language processing , Language and the word , Natural Language Generation , Information presentation , Weather forecasts
Journal title :
Artificial Intelligence
Journal title :
Artificial Intelligence