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Dialog bAbI Tasks
Text
NLP
|...
License: Unknown

Overview

This section presents the set of 6 tasks for testing end-to-end dialog systems in the restaurant
domain described in the paper:

Antoine Bordes,
Y-Lan Boureau, Jason Weston,
Learning End-to-End Goal-Oriented Dialog,
arxiv:1605.07683.

Each task tests a unique aspect of dialog. Tasks are designed to complement
the set of 20 bAbI tasks for story understanding of the previous section.

For each task, there
are 1000 dialogs for training, 1000 for development and 1000 for testing. For tasks 1-5, we
also include a second test set (with suffix -OOV.txt) that contains dialogs including entities
not present in training and development sets.

Data Format

The file format for each task is as follows:

ID user_utterance [tab] bot_utterance
...
The IDs for a given dialog start at 1 and increase. When the IDs in a file reset back to 1
you can consider the following sentences as a new dialog. When the bot speaks two times in
a row, we used the special token “<SILENCE>” to fill in for the missing user utterance. See
more details in the README included with the dataset. The goal of the tasks is to predict the
bot utterances, that can be sentences or API calls (sentences starting with the special token
“api_call”). Here is an example of dialog (from Task 1):

1 hi hello what can i help you with today
2 can you make a restaurant reservation
with italian cuisine for six people in a cheap price range i'm on it
3 <SILENCE>where should it be
4 rome please ok let me look into some options for you
5 <SILENCE> api_call italian rome six cheap

Data Summary
Type
Text,
Amount
--
Size
2.9MB
Provided by
Facebook Research
Giving people the power to build community through research and innovation
| Amount -- | Size 2.9MB
Dialog bAbI Tasks
Text
NLP
License: Unknown

Overview

This section presents the set of 6 tasks for testing end-to-end dialog systems in the restaurant
domain described in the paper:

Antoine Bordes,
Y-Lan Boureau, Jason Weston,
Learning End-to-End Goal-Oriented Dialog,
arxiv:1605.07683.

Each task tests a unique aspect of dialog. Tasks are designed to complement
the set of 20 bAbI tasks for story understanding of the previous section.

For each task, there
are 1000 dialogs for training, 1000 for development and 1000 for testing. For tasks 1-5, we
also include a second test set (with suffix -OOV.txt) that contains dialogs including entities
not present in training and development sets.

Data Format

The file format for each task is as follows:

ID user_utterance [tab] bot_utterance
...
The IDs for a given dialog start at 1 and increase. When the IDs in a file reset back to 1
you can consider the following sentences as a new dialog. When the bot speaks two times in
a row, we used the special token “<SILENCE>” to fill in for the missing user utterance. See
more details in the README included with the dataset. The goal of the tasks is to predict the
bot utterances, that can be sentences or API calls (sentences starting with the special token
“api_call”). Here is an example of dialog (from Task 1):

1 hi hello what can i help you with today
2 can you make a restaurant reservation
with italian cuisine for six people in a cheap price range i'm on it
3 <SILENCE>where should it be
4 rome please ok let me look into some options for you
5 <SILENCE> api_call italian rome six cheap

0
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