--- annotations_creators: - none language_creators: - unknown languages: - unknown licenses: - apache-2.0 multilinguality: - unknown pretty_name: dstc10_track2_task2 size_categories: - unknown source_datasets: - original task_categories: - dialog-response-generation task_ids: - unknown --- # Dataset Card for GEM/dstc10_track2_task2 ## Dataset Description - **Homepage:** https://github.com/alexa/alexa-with-dstc10-track2-dataset - **Repository:** https://github.com/alexa/alexa-with-dstc10-track2-dataset - **Paper:** https://assets.amazon.science/54/a1/5282d47044179737b4289622c824/how-robust-are-you-evaluating-task-oriented-dialogue-systems-on-spoken-conversations.pdf - **Leaderboard:** https://eval.ai/challenge/1663/overview - **Point of Contact:** Seokhwan Kim ### Link to Main Data Card You can find the main data card on the [GEM Website](https://gem-benchmark.com/data_cards/dstc10_track2_task2). ### Dataset Summary The DSTC10 Track2 Task 2 follows the DSTC9 Track1 task, where participants have to implement knowledge-grounded dialog systems. The training dataset is inherited from the DSTC9 challenge and is in the written domain, while the test set is newly collected and consists of noisy ASR transcripts. Hence, the dataset facilitates building models for grounded dialog response generation. You can load the dataset via: ``` import datasets data = datasets.load_dataset('GEM/dstc10_track2_task2') ``` The data loader can be found [here](https://huggingface.co/datasets/GEM/dstc10_track2_task2). #### website https://github.com/alexa/alexa-with-dstc10-track2-dataset #### paper https://assets.amazon.science/54/a1/5282d47044179737b4289622c824/how-robust-are-you-evaluating-task-oriented-dialogue-systems-on-spoken-conversations.pdf #### authors Seokhwan Kim, Yang Liu, Di Jin, Alexandros Papangelis, Karthik Gopalakrishnan, Behnam Hedayatnia, Dilek Hakkani-Tur (Amazon Alexa AI) ## Dataset Overview ### Where to find the Data and its Documentation #### Webpage https://github.com/alexa/alexa-with-dstc10-track2-dataset #### Download https://github.com/alexa/alexa-with-dstc10-track2-dataset #### Paper https://assets.amazon.science/54/a1/5282d47044179737b4289622c824/how-robust-are-you-evaluating-task-oriented-dialogue-systems-on-spoken-conversations.pdf #### BibTex @inproceedings{kim2021robust, title={" How Robust ru?": Evaluating Task-Oriented Dialogue Systems on Spoken Conversations}, author={Kim, Seokhwan and Liu, Yang and Jin, Di and Papangelis, Alexandros and Gopalakrishnan, Karthik and Hedayatnia, Behnam and Hakkani-Tur, Dilek}, journal={IEEE Automatic Speech Recognition and Understanding Workshop}, year={2021} } #### Contact Name Seokhwan Kim #### Contact Email seokhwk@amazon.com #### Has a Leaderboard? yes #### Leaderboard Link https://eval.ai/challenge/1663/overview #### Leaderboard Details It evaluates the models based on the automatic metrics defined in the task paper for the three tasks of detection, selection and generation. ### Languages and Intended Use #### Multilingual? no #### Covered Languages `En` #### License apache-2.0: Apache License 2.0 #### Intended Use To conduct research on dialogue state tracking and knowledge-grounded response generation. #### Primary Task Dialog Response Generation #### Communicative Goal This dataset aims to explore the robustness of conversational models when trained on spoken data. It has two aspects, multi-domain dialogue state tracking and conversation modeling with access to unstructured knowledge. ### Credit #### Curation Organization Type(s) `industry` #### Curation Organization(s) Amazon #### Dataset Creators Seokhwan Kim, Yang Liu, Di Jin, Alexandros Papangelis, Karthik Gopalakrishnan, Behnam Hedayatnia, Dilek Hakkani-Tur (Amazon Alexa AI) #### Funding Amazon #### Who added the Dataset to GEM? Alexandros Papangelis (Amazon Alexa AI), Di Jin (Amazon Alexa AI), Nico Daheim (RWTH Aachen University) ### Dataset Structure #### Data Fields features = datasets.Features( { "id": datasets.Value("string"), "gem_id": datasets.Value("string"), "turns": [ { "speaker": datasets.Value("string"), "text": datasets.Value("string"), "nbest": [ { "hyp": datasets.Value("string"), "score": datasets.Value("float"), } ], } ], "knowledge": { "domain": datasets.Value("string"), "entity_name": datasets.Value("string"), "title": datasets.Value("string"), "body": datasets.Value("string"), }, "response": datasets.Value("string"), "source": datasets.Value("string"), "linearized_input": datasets.Value("string"), "target": datasets.Value("string"), "references": [datasets.Value("string")], } ) nbest contains an nbest list of outputs generated by an ASR system along with their scores. knowledge defines the annotated grounding as well as its metadata #### Reason for Structure It was kept compatible with MultiWox 2.X data. #### Example Instance {'id': '0', 'gem_id': 'GEM-dstc10_track2_task2-test-0', 'turns': [{'speaker': 'U', 'text': "hi uh i'm looking for restaurant in lower ha", 'nbest': [{'hyp': "hi uh i'm looking for restaurant in lower ha", 'score': -25.625450134277344}, {'hyp': "hi uh i'm looking for restaurant in lower hai", 'score': -25.969446182250977}, {'hyp': "hi uh i'm looking for restaurant in lower haig", 'score': -32.816890716552734}, {'hyp': "hi uh i'm looking for restaurant in lower haigh", 'score': -32.84316635131836}, {'hyp': "hi uh i'm looking for restaurant in lower hag", 'score': -32.8637580871582}, {'hyp': "hi uh i'm looking for restaurant in lower hah", 'score': -33.1048698425293}, {'hyp': "hi uh i'm looking for restaurant in lower hait", 'score': -33.96509552001953}, {'hyp': "hi um i'm looking for restaurant in lower hai", 'score': -33.97885513305664}, {'hyp': "hi um i'm looking for restaurant in lower haig", 'score': -34.56083679199219}, {'hyp': "hi um i'm looking for restaurant in lower haigh", 'score': -34.58711242675781}]}, {'speaker': 'S', 'text': 'yeah definitely i can go ahead and help you with that ummm what kind of option in a restaurant are you looking for', 'nbest': []}, {'speaker': 'U', 'text': 'yeah umm am looking for an expensive restaurant', 'nbest': [{'hyp': 'yeah umm am looking for an expensive restaurant', 'score': -21.272899627685547}, {'hyp': 'yeah umm m looking for an expensive restaurant', 'score': -21.444047927856445}, {'hyp': 'yeah umm a m looking for an expensive restaurant', 'score': -21.565458297729492}, {'hyp': 'yeah ummm am looking for an expensive restaurant', 'score': -21.68832778930664}, {'hyp': 'yeah ummm m looking for an expensive restaurant', 'score': -21.85947608947754}, {'hyp': 'yeah ummm a m looking for an expensive restaurant', 'score': -21.980886459350586}, {'hyp': "yeah umm a'm looking for an expensive restaurant", 'score': -22.613924026489258}, {'hyp': "yeah ummm a'm looking for an expensive restaurant", 'score': -23.02935218811035}, {'hyp': 'yeah um am looking for an expensive restaurant', 'score': -23.11180305480957}, {'hyp': 'yeah um m looking for an expensive restaurant', 'score': -23.28295135498047}]}, {'speaker': 'S', 'text': "lemme go ahead and see what i can find for you ok great so i do ummm actually no i'm sorry is there something else i can help you find i don't see anything expensive", 'nbest': []}, {'speaker': 'U', 'text': "sure ummm maybe if you don't have anything expensive how about something in the moderate price range", 'nbest': [{'hyp': "sure ummm maybe if you don't have anything expensive how about something in the moderate price range", 'score': -27.492507934570312}, {'hyp': "sure umm maybe if you don't have anything expensive how about something in the moderate price range", 'score': -27.75853729248047}, {'hyp': "sure ummm maybe if you don't have anything expensive how about something in the moderate price rang", 'score': -29.44410514831543}, {'hyp': "sure umm maybe if you don't have anything expensive how about something in the moderate price rang", 'score': -29.710134506225586}, {'hyp': "sure um maybe if you don't have anything expensive how about something in the moderate price range", 'score': -31.136560440063477}, {'hyp': "sure um maybe if you don't have anything expensive how about something in the moderate price rang", 'score': -33.088157653808594}, {'hyp': "sure ummm maybe i you don't have anything expensive how about something in the moderate price range", 'score': -36.127620697021484}, {'hyp': "sure umm maybe i you don't have anything expensive how about something in the moderate price range", 'score': -36.39365005493164}, {'hyp': "sure ummm maybe if yo don't have anything expensive how about something in the moderate price range", 'score': -36.43605041503906}, {'hyp': "sure umm maybe if yo don't have anything expensive how about something in the moderate price range", 'score': -36.70207977294922}]}, {'speaker': 'S', 'text': 'ok moderate lemme go ahead and check to see what i can find for moderate ok great i do have several options coming up how does the view lounge sound', 'nbest': []}, {'speaker': 'U', 'text': 'that sounds good ummm do they have any sort of happy hour special', 'nbest': [{'hyp': 'that sounds good ummm do they have any sort of happy hour special', 'score': -30.316478729248047}, {'hyp': 'that sounds good umm do they have any sort of happy hour special', 'score': -30.958009719848633}, {'hyp': 'that sounds good um do they have any sort of happy hour special', 'score': -34.463165283203125}, {'hyp': 'that sounds good ummm do they have any sirt of happy hour special', 'score': -34.48350143432617}, {'hyp': 'that sounds good umm do they have any sirt of happy hour special', 'score': -35.12503433227539}, {'hyp': 'that sounds good ummm do they have any sord of happy hour special', 'score': -35.61939239501953}, {'hyp': 'that sounds good umm do they have any sord of happy hour special', 'score': -36.26092529296875}, {'hyp': 'that sounds good ummm do they have any sont of happy hour special', 'score': -37.697105407714844}, {'hyp': 'that sounds good umm do they have any sont of happy hour special', 'score': -38.33863830566406}, {'hyp': 'that sounds good um do they have any sirt of happy hour special', 'score': -38.630191802978516}]}], 'knowledge': {'domain': 'restaurant', 'entity_name': 'The View Lounge', 'title': 'Does The View Lounge offer happy hour?', 'body': 'The View Lounge offers happy hour.'}, 'response': 'uhhh great question lemme go ahead and check that out for you ok fantastic so it looks like they do offer happy hour', 'source': 'sf_spoken', 'linearized_input': " hi uh i'm looking for restaurant in lower ha yeah definitely i can go ahead and help you with that ummm what kind of option in a restaurant are you looking for yeah umm am looking for an expensive restaurant lemme go ahead and see what i can find for you ok great so i do ummm actually no i'm sorry is there something else i can help you find i don't see anything expensive sure ummm maybe if you don't have anything expensive how about something in the moderate price range ok moderate lemme go ahead and check to see what i can find for moderate ok great i do have several options coming up how does the view lounge sound that sounds good ummm do they have any sort of happy hour special || knowledge domain: restaurant, entity: The View Lounge, title: Does The View Lounge offer happy hour?, information: The View Lounge offers happy hour.", 'target': 'uhhh great question lemme go ahead and check that out for you ok fantastic so it looks like they do offer happy hour', 'references': ['uhhh great question lemme go ahead and check that out for you ok fantastic so it looks like they do offer happy hour']} #### Data Splits train: training set, val: validation set, test: test set #### Splitting Criteria The track dataset originally only consists of a validation and test set in the spoken domain with noisy ASR transcripts. The training set is taken from the predecessor task DSTC9 Track 1 and contains written conversations. ## Dataset in GEM ### Rationale for Inclusion in GEM #### Why is the Dataset in GEM? This dataset can be used to evaluate conversational models on spoken inputs (using ASR hypotheses). In particular, we can evaluate the models’ ability to understand language by tracking the dialogue state, and their ability to generate knowledge-grounded responses. #### Similar Datasets yes #### Unique Language Coverage no #### Difference from other GEM datasets This dataset contains transcribed spoken interactions. #### Ability that the Dataset measures We can measure the model’s ability to understand language and to generate knowledge-grounded responses. ### GEM-Specific Curation #### Modificatied for GEM? no #### Additional Splits? no ### Getting Started with the Task ## Previous Results ### Previous Results #### Measured Model Abilities This dataset can be used to evaluate conversational models on spoken inputs (using ASR hypotheses). In particular, we can evaluate the models’ ability to generate knowledge-grounded responses. #### Metrics `Other: Other Metrics` #### Other Metrics BLEU-1, BLEU-2, BLEU-3, BLEU-4, METEOR, ROGUE-1, ROGUE-2, ROGUE-L #### Previous results available? no ## Dataset Curation ### Original Curation #### Original Curation Rationale We want to explore how conversational models perform on spoken data. #### Communicative Goal This dataset aims to explore the robustness of conversational models when evaluated on spoken data. It has two aspects, multi-domain dialogue state tracking and conversation modeling with access to unstructured knowledge. #### Sourced from Different Sources no ### Language Data #### How was Language Data Obtained? `Other` #### Topics Covered The conversations revolve around 5 domains (or topics): hotels, restaurants, attractions, taxi, train. #### Data Validation not validated #### Was Data Filtered? not filtered ### Structured Annotations #### Additional Annotations? none #### Annotation Service? no ### Consent #### Any Consent Policy? yes ### Private Identifying Information (PII) #### Contains PII? no PII #### Justification for no PII The subjects were instructed to conduct fictional conversations about booking restaurants or requesting fictional information. ### Maintenance #### Any Maintenance Plan? no ## Broader Social Context ### Previous Work on the Social Impact of the Dataset #### Usage of Models based on the Data no ### Impact on Under-Served Communities #### Addresses needs of underserved Communities? no ### Discussion of Biases #### Any Documented Social Biases? unsure ## Considerations for Using the Data ### PII Risks and Liability #### Potential PII Risk There should be no risk related to PII as the subjects conduct fictional conversations. ### Licenses #### Copyright Restrictions on the Dataset `open license - commercial use allowed` #### Copyright Restrictions on the Language Data `open license - commercial use allowed` ### Known Technical Limitations