| Challenge: | The Latvian Twitter Eater Corpus (LTEC) is a collection of tweets gathered by following the appearance of 363 keywords related to food, drinks, eating and drinking in various valid word forms in the Latvian language. |
| Approach: | They build upon the Latvian Twitter Eater Corpus which is focused on the narrow domain of tweets related to food, drinks, eating and drinking. |
| Outcome: | The Latvian Twitter Eater Corpus (LTEC) is a collection of tweets gathered by following the appearance of 363 keywords related to food and eating inflected in various valid word forms in the Latvian language. |
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