e-caste / simmc

With the aim of building next generation virtual assistants that can handle multimodal inputs and perform multimodal actions, we introduce two new datasets (both in the virtual shopping domain), the annotation schema, the core technical tasks, and the baseline models. The code for the baselines and the datasets will be opensourced.

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Situated Interactive MultiModal Conversations (SIMMC) Challenge 2020

Welcome to the Situated Interactive Multimodal Conversations (SIMMC) Track for DSTC9 2020.

The SIMMC challenge aims to lay the foundations for the real-world assistant agents that can handle multimodal inputs, and perform multimodal actions. We thus focus on task-oriented dialogs that encompass a situated multimodal user context in the form of a co-observed image or virtual reality (VR) environment. The context is dynamically updated on each turn based on the user input and the assistant action. Our challenge focuses on our SIMMC datasets, both of which are shopping domains: (a) furniture (grounded in a shared virtual environment) and, (b) fashion (grounded in an evolving set of images).

Organizers: Ahmad Beirami, Eunjoon Cho, Paul A. Crook, Ankita De, Alborz Geramifard, Satwik Kottur, Seungwhan Moon, Shivani Poddar, Rajen Subba

Example from SIMMC

Example from SIMMC-Furniture Dataset

Latest News

  • [Sept 28, 2020] Test-Std data released, End of Challenge Phase 1.
  • [June 22, 2020] Challenge announcement. Training / development datasets are released.
  • [July 8, 2020] Evaluation scripts and code to train baselines for Sub-Task #1, Sub-Task #2 released.

Important Links

Timeline

Date Milestone
June 22, 2020 Training & development data released
Sept 28, 2020 Test-Std data released, End of Challenge Phase 1
Oct 5, 2020 Entry submission deadline, End of Challenge Phase 2
Oct 12, 2020 Final results announced

Track Description

Tasks and Metrics

We present three sub-tasks primarily aimed at replicating human-assistant actions in order to enable rich and interactive shopping scenarios.

Sub-Task #1 Multimodal Action Prediction
Goal To predict the correct Assistant API action(s) (classification)
Input Current user utterance, Dialog context, Multimodal context
Output Structural API (action & arguments)
Metrics Action Accuracy, Attribute Accuracy, Action Perplexity
Sub-Task #2 Multimodal Dialog Response Generation & Retrieval
Goal To generate Assistant responses or retrieve from a candidate pool
Input Current user utterance, Dialog context, Multimodal context, (Ground-truth API Calls)
Output Assistant response utterance
Metrics Generation: BLEU-4, Retrieval: MRR, R@1, R@5, R@10, Mean Rank
Sub-Task #3 Multimodal Dialog State Tracking (MM-DST)
Goal To track user belief states across multiple turns
Input Current user utterance, Dialogue context, Multimodal context
Output Belief state for current user utterance
Metrics Slot F1, Intent F1

Please check the task input file for a full description of inputs for each subtask.

Evaluation

For the DSTC9 SIMMC Track, we will do a two phase evaluation as follows.

Challenge Period 1: Participants will evaluate the model performance on the provided devtest set. At the end of Challenge Period 1 (Sept 28), we ask participants to submit their model prediction results and a link to their code repository.

Challenge Period 2: A test-std set will be released on Sept 28 for the participants who submitted the results for the Challenge Period 1. We ask participants to submit their model predictions on the test-std set by Oct 5. We will announce the final results and the winners on Oct 12.

Challenge Instructions

(1) Challenge Registration

  • Fill out this form to register at DSTC9. Check “Track 4: Visually Grounded Dialog Track” along with other tracks you are participating in.

(2) Download Datasets and Code

  • Irrespective of participation in the challenge, we'd like to encourge those interested in this dataset to complete this optional survey. This will also help us communicate any future updates on the codebase, the datasets, and the challenge track.

  • Git clone our repository to download the datasets and the code. You may use the provided baselines as a starting point to develop your models.

$ git lfs install
$ git clone https://github.com/facebookresearch/simmc.git

(3) Reporting Results for Challenge Phase 1

  • Submit your model prediction results on the devtest set, following the submission instructions.
  • We will release the test-std set (with ground-truth labels hidden) on Sept 28.

(4) Reporting Results for Challenge Phase 2

  • Submit your model prediction results on the test-std set, following the submission instructions.
  • We will evaluate the participants’ model predictions using the same evaluation script for Phase 1, and announce the results.

Contact

Questions related to SIMMC Track, Data, and Baselines

Please contact simmc@fb.com, or leave comments in the Github repository.

DSTC Mailing List

If you want to get the latest updates about DSTC9, join the DSTC mailing list.

Citations

If you want to publish experimental results with our datasets or use the baseline models, please cite the following articles:

@article{moon2020situated,
  title={Situated and Interactive Multimodal Conversations},
  author={Moon, Seungwhan and Kottur, Satwik and Crook, Paul A and De, Ankita and Poddar, Shivani and Levin, Theodore and Whitney, David and Difranco, Daniel and Beirami, Ahmad and Cho, Eunjoon and Subba, Rajen and Geramifard, Alborz},
  journal={arXiv preprint arXiv:2006.01460},
  year={2020}
}

@article{crook2019simmc,
  title={SIMMC: Situated Interactive Multi-Modal Conversational Data Collection And Evaluation Platform},
  author={Crook, Paul A and Poddar, Shivani and De, Ankita and Shafi, Semir and Whitney, David and Geramifard, Alborz and Subba, Rajen},
  journal={arXiv preprint arXiv:1911.02690},
  year={2019}
}

NOTE: The paper above describes in detail the datasets, the NLU/NLG/Coref annotations, and some of the baselines we provide in this challenge. The paper reports the results from an earlier version of the dataset and with different train-dev-test splits, hence the baseline performances on the challenge resources will be slightly different.

License

SIMMC is released under CC-BY-NC-SA-4.0, see LICENSE for details.

About

With the aim of building next generation virtual assistants that can handle multimodal inputs and perform multimodal actions, we introduce two new datasets (both in the virtual shopping domain), the annotation schema, the core technical tasks, and the baseline models. The code for the baselines and the datasets will be opensourced.

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