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  # Dataset Card for MetaLWOZ
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  - **Repository:** https://www.microsoft.com/en-us/research/project/metalwoz/
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  - **Leaderboard:** None
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  - **Who transforms the dataset:** Qi Zhu(zhuq96 at gmail dot com)
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  ### Dataset Summary
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  This large dataset was created by crowdsourcing 37,884 goal-oriented dialogs, covering 227 tasks in 47 domains. Domains include bus schedules, apartment search, alarm setting, banking, and event reservation. Each dialog was grounded in a scenario with roles, pairing a person acting as the bot and a person acting as the user. (This is the Wizard of Oz reference—using people behind the curtain who act as the machine). Each pair were given a domain and a task, and instructed to converse for 10 turns to satisfy the user’s queries. For example, if a user asked if a bus stop was operational, the bot would respond that the bus stop had been moved two blocks north, which starts a conversation that addresses the user’s actual need.
 
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+ ---
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+ language:
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+ - en
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+ license: []
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+ multilinguality:
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+ - monolingual
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+ pretty_name: MetaLWOZ
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+ size_categories:
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+ - 10K<n<100K
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+ task_categories:
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+ - conversational
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+ ---
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+
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  # Dataset Card for MetaLWOZ
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  - **Repository:** https://www.microsoft.com/en-us/research/project/metalwoz/
 
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  - **Leaderboard:** None
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  - **Who transforms the dataset:** Qi Zhu(zhuq96 at gmail dot com)
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+ To use this dataset, you need to install [ConvLab-3](https://github.com/ConvLab/ConvLab-3) platform first. Then you can load the dataset via:
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+ ```
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+ from convlab.util import load_dataset, load_ontology, load_database
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+
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+ dataset = load_dataset('metalwoz')
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+ ontology = load_ontology('metalwoz')
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+ database = load_database('metalwoz')
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+ ```
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+ For more usage please refer to [here](https://github.com/ConvLab/ConvLab-3/tree/master/data/unified_datasets).
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+
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  ### Dataset Summary
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  This large dataset was created by crowdsourcing 37,884 goal-oriented dialogs, covering 227 tasks in 47 domains. Domains include bus schedules, apartment search, alarm setting, banking, and event reservation. Each dialog was grounded in a scenario with roles, pairing a person acting as the bot and a person acting as the user. (This is the Wizard of Oz reference—using people behind the curtain who act as the machine). Each pair were given a domain and a task, and instructed to converse for 10 turns to satisfy the user’s queries. For example, if a user asked if a bus stop was operational, the bot would respond that the bus stop had been moved two blocks north, which starts a conversation that addresses the user’s actual need.