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README.md
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# MuLD
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MuLD (Multitask Long Document Benchmark) is a set of 6 NLP tasks where the inputs consist of at least 10,000 words. The benchmark covers a wide variety of task types including translation, summarization, question answering, and classification. Additionally there is a range of output lengths from a single word classification label all the way up to an output longer than the input text.
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### Supported Tasks and Leaderboards
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The 6 MuLD tasks consist of:
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### Dataset Structure
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The data is presented in a text-to-text format where each instance contains a input string, output string and (optionally) json encoded metadata.
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# MuLD
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> The Multitask Long Document Benchmark
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MuLD (Multitask Long Document Benchmark) is a set of 6 NLP tasks where the inputs consist of at least 10,000 words. The benchmark covers a wide variety of task types including translation, summarization, question answering, and classification. Additionally there is a range of output lengths from a single word classification label all the way up to an output longer than the input text.
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### Supported Tasks and Leaderboards
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The 6 MuLD tasks consist of:
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- **NarrativeQA** - A question answering dataset requiring an understanding of the plot of books and films.
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- **HotpotQA** - An expanded version of HotpotQA requiring multihop reasoning between multiple wikipedia pages. This expanded version includes the full Wikipedia pages.
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- ** OpenSubtitles**
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- **VLSP (Very Long Scientific Papers)**
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- **AO3 Style Change Detection**
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- **Character Type Identification**
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### Dataset Structure
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The data is presented in a text-to-text format where each instance contains a input string, output string and (optionally) json encoded metadata.
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