Validating and Exploring Large Geographic Corpora
It addresses data quality issues in large-scale corpora for NLP researchers, highlighting risks to under-represented languages, but is incremental as it applies standard techniques to new data.
This paper investigates how corpus creation decisions affect large multi-lingual geographic web corpora, finding that cleaning steps like language identification and deduplication improve sub-corpora validity but unevenly across languages, potentially excluding under-represented populations.
This paper investigates the impact of corpus creation decisions on large multi-lingual geographic web corpora. Beginning with a 427 billion word corpus derived from the Common Crawl, three methods are used to improve the quality of sub-corpora representing specific language-country pairs like New Zealand English: (i) the agreement of independent language identification systems, (ii) hash-based deduplication, and (iii) location-specific outlier detection. The impact of each of these steps is then evaluated at the language level and the country level by using corpus similarity measures to compare each resulting corpus with baseline data sets. The goal is to understand the impact of upstream data cleaning decisions on downstream corpora with a specific focus on under-represented languages and populations. The evaluation shows that the validity of sub-corpora is improved with each stage of cleaning but that this improvement is unevenly distributed across languages and populations. This result shows how standard corpus creation techniques can accidentally exclude under-represented populations.