Editing Human Centered Data Science (Fall 2019)/Assignments
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==== Analysis ==== | ==== Analysis ==== | ||
Your analysis will consist of calculating the proportion (as a percentage) of articles-per-population and high-quality articles for each country | Your analysis will consist of calculating the proportion (as a percentage) of articles-per-population and high-quality articles for each country. By "high quality" articles, in this case we mean the number of articles about politicians in a given country that ORES predicted would be in either the "FA" (featured article) or "GA" (good article) classes. | ||
Examples: | Examples: | ||
* if a country has a population of 10,000 people, and you found 10 articles about politicians from that country, then the percentage of articles-per-population would be .1%. | * if a country has a population of 10,000 people, and you found 10 articles about politicians from that country, then the percentage of articles-per-population would be .1%. | ||
* if a country has 10 articles about politicians, and 2 of them are FA or GA class articles, then the percentage of high-quality articles would be 20%. | * if a country has 10 articles about politicians, and 2 of them are FA or GA class articles, then the percentage of high-quality articles would be 20%. | ||
==== Results format ==== | ==== Results format ==== |