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# MultiWOZ 2.2 |
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This dataset consists of a schema file `schema.json` describing the ontology and |
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dialogue files `dialogues_*.json` of dialogue data under the `train`, `dev`, and |
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`test` folders. |
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**Notes:** |
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- Compared to MultiWOZ 2.1, we remove `SNG01862.json` as it's an invalid dialogue. |
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- MultiWOZ 2.2 is also available on [Hugging Face](https://huggingface.co/datasets/multi_woz_v22) and [ParlAI](https://parl.ai/docs/tasks.html). |
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## Schema file |
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`schema.json` defines the new ontology using the schema representation in the |
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[schema-guided dialogue dataset](https://github.com/google-research-datasets/dstc8-schema-guided-dialogue#scheme-representation]). |
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The table below shows the categorical slots, non-categorical slots and intents |
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defined for each domain. |
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| Domain | Categorical slots | Non-categorical slots | Intents | |
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| ---------- | :---------------------: | :---------------------: | :--------: | |
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| Restaurant | pricerange, area, bookday, bookpeople | food, name, booktime, address, phone, postcode, ref | find, book | |
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| Attraction | area, type | name, address, entrancefee, openhours, entrancefee, openhours, phone, postcode | find | |
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| Hotel | pricerange, parking, internet, stars, area, type, bookpeople, bookday, bookstay | name, address, phone, postcode, ref | find, book | |
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| Taxi | - | destination, departure, arriveby, leaveat, phone, type | book | |
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| Train | destination, departure, day, bookpeople | arriveby, leaveat, trainid, ref, price, duration | find, book | |
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| Bus | day | departure, destination, leaveat | find | |
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| Hospital | - | department , address, phone, postcode | find | |
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| Police | - | name, address, phone, postcode | find | |
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Of the 61 slots in the schema, the following 35 slots are tracked in the |
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dialogue state: |
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``` |
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{ |
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"attraction-area", |
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"attraction-name", |
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"attraction-type", |
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"bus-day", |
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"bus-departure", |
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"bus-destination", |
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"bus-leaveat", |
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"hospital-department", |
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"hotel-area", |
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"hotel-bookday", |
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"hotel-bookpeople", |
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"hotel-bookstay", |
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"hotel-internet", |
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"hotel-name", |
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"hotel-parking", |
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"hotel-pricerange", |
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"hotel-stars", |
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"hotel-type", |
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"restaurant-area", |
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"restaurant-bookday", |
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"restaurant-bookpeople", |
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"restaurant-booktime", |
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"restaurant-food", |
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"restaurant-name", |
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"restaurant-pricerange", |
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"taxi-arriveby", |
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"taxi-departure", |
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"taxi-destination", |
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"taxi-leaveat", |
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"train-arriveby", |
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"train-bookpeople", |
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"train-day", |
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"train-departure", |
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"train-destination", |
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"train-leaveat" |
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} |
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``` |
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## Dialogue files |
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Dialogues are formatted following the data presentation of the |
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[schema-guided dialogue dataset](https://github.com/google-research-datasets/dstc8-schema-guided-dialogue#dialogue-representation). |
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**Because the state value of a slot can be mentioned in different ways in the |
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dialogues (e.g. 8pm and 20:00), the ground truth state values is presented as a |
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list of values to incorporate such cases. <span style="color:red">Predicting any |
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of them is considered as correct in the evaluation.</span>** Specifically, the |
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state values of each turn is represented as: |
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``` |
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{ |
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"state":{ |
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"active_intent": String. User intent of the current turn. |
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"requested_slots": List of string representing the slots, the values of which are being requested by the user. |
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"slot_values": Dict of state values. The key is slot name in string. The value is a list of values. |
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} |
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} |
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``` |
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In addition, we also add the span annotations that identify the location where |
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slot values have been mentioned in the utterances for non-categorical slots. |
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These span annotations are represented as follows: |
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``` |
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{ |
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"slots": [ |
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{ |
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"slot": String of slot name. |
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"start": Int denoting the index of the starting character in the utterance corresponding to the slot value. |
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"exclusive_end": Int denoting the index of the character just after the last character corresponding to the slot value in the utterance. In python, utterance[start:exclusive_end] gives the slot value. |
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"value": String of value. It equals to utterance[start:exclusive_end], where utterance is the current utterance in string. |
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} |
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] |
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} |
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``` |
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There are some non-categorical slots whose values are carried over from another |
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slot in the dialogue state. Their values don"t explicitly appear in the |
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utterances. |
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For example, a user utterance can be *"I also need a taxi from the restaurant to |
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the hotel."*, in which the state values of *"taxi-departure"* and |
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*"taxi-destination"* are respectively carried over from that of |
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*"restaurant-name"* and *"hotel-name"*. **For these slots, instead of annotating |
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them as spans, we use a <span style="color:red">"copy from" annotation</span> to |
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identify the slot it copies the value from.** This annotation is formatted as |
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follows, |
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``` |
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{ |
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"slots": [ |
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{ |
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"slot": Slot name string. |
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"copy_from": The slot to copy from. |
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"value": A list of slot values being . It corresponds to the state values of the "copy_from" slot. |
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} |
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] |
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} |
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``` |
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## Action annotation |
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There are 8,333 turns missing dialogue action annotations in MultiWOZ 2.1. We |
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used a finetuned [T5 model](https://github.com/google-research/text-to-text-transfer-transformer) to annotate actions for these missing turns, and manually |
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verified and corrected them. Please note that there are still 749 |
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turns without dialogue action annotations because the semantics of the |
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utterances can"t be appropriately expressed using |
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[the dialogue actions defined by ConvLab](https://github.com/ConvLab/ConvLab/blob/master/data/multiwoz/annotation/Multiwoz%20data%20analysis.md#dialog-act), |
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such as *"Sure. Just a moment."*, *"said to skip."*, etc. |
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Please check the annotated action annotation in "dialog_acts.json". It is |
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formatted in the same style as MultiWOZ 2.1 except that we use character-level |
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indexing instead of token-level indexing for the action values. |
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``` |
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{ |
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"$dialogue_id": [ |
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"$turn_id": { |
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"dialogue_acts": { |
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"$act_name": [ |
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[ |
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"$slot_name", |
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"$action_value" |
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] |
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] |
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}, |
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"span_info": [ |
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[ |
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"$act_name" |
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"$slot_name", |
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"$action_value" |
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"$start_charater_index", |
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"$exclusive_end_character_index" |
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] |
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] |
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} |
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] |
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} |
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``` |
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## Conversion to the data format of MultiWOZ 2.1 |
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To include the corrections from MultiWOZ 2.2 dataset into MultiWOZ 2.1 in the |
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format used by the MultiWOZ 2.1 dataset, please download the |
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[MultiWOZ 2.1](https://github.com/budzianowski/multiwoz/blob/master/data/MultiWOZ_2.1.zip) |
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zip file, unzip it, and run |
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```bash |
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python convert_to_multiwoz_format.py --multiwoz21_data_dir=<multiwoz21_data_dir> --output_file=<output json file> |
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``` |
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Please refer to our |
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[paper](https://www.aclweb.org/anthology/2020.nlp4convai-1.13.pdf) for more |
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details about the dataset. |
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## Questions |
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We are continuously making efforts to make this dataset better. If you have any |
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questions, please feel free to contact us by ([email protected] or |
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[email protected]). |
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