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--- |
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license: cc-by-4.0 |
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task_categories: |
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- text-generation |
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- text-classification |
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language: |
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- ja |
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size_categories: |
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- 10K<n<100K |
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--- |
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# Overview |
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This dataset provides a convenient and user-friendly format of data from [Aozora Bunko (青空文庫)](https://www.aozora.gr.jp/), a website that compiles public-domain books in Japan, ideal for Machine Learning applications. |
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# Methodology |
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## 1. Data collection |
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We firstly downloaded the [CSV file that lists all works](https://www.aozora.gr.jp/index_pages/person_all.html). The information extracted from this CSV is incorporated into the `meta` field. |
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Next, we filtered out any books not categorized as public domain. |
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We retrieved the main text of each book corresponding to every row in the CSV and incorporated it into the `text` field. |
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## 2. Deduplication |
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We removed entries where the `図書カードURL` (Library card URL) in this CSV did not coincide with the `作品ID` (Work ID) and `人物ID` (Person ID). |
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In addition, rows with text identical to previously encountered text were discarded. |
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## 3. Cleaning |
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The data in the `text` field was then cleaned in the following sequence: |
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1. Convert new lines to `\n` |
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2. Remove headers |
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3. Remove footnotes and add them to the `footnote` field |
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4. Remove ruby (phonetic guides) |
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5. Convert specific characters, such as foreign characters and iteration marks, into standard Unicode characters |
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6. Convert inserted notes into regular parenthetical text |
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7. Remove any remaining markup |
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8. Remove leading and trailing whitespace and horizontal rules |
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# License |
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CC BY 4.0 |