plot_id stringlengths 7 10 | plot stringlengths 106 63.9k | title stringlengths 1 83 | question_id stringlengths 36 36 | question stringlengths 5 231 | answers sequencelengths 0 15 | no_answer bool 2
classes |
|---|---|---|---|---|---|---|
/m/03vyhn | Set in the second half of the 22nd century, Mars has been 84% terraformed, allowing humans to walk on the surface without pressure suits. Martian society has become matriarchal, with women in most positions of authority. The story concerns police officer Melanie Ballard (Natasha Henstridge), second in command of a team... | Ghosts of Mars | 28ded42d-f6d5-aac6-cf6f-9e6e0820c5aa | who is there with Melanie Ballard? | [
"second in command Sergeant Jericho and prisoner Desolation Williams",
"Williams"
] | false |
/m/03vyhn | Set in the second half of the 22nd century, Mars has been 84% terraformed, allowing humans to walk on the surface without pressure suits. Martian society has become matriarchal, with women in most positions of authority. The story concerns police officer Melanie Ballard (Natasha Henstridge), second in command of a team... | Ghosts of Mars | e7db917a-426b-62c1-01f8-a8eff0a71880 | Who is colonized by a high tech company? | [
"Humans on Mars",
"Mars"
] | false |
/m/03vyhn | Set in the second half of the 22nd century, Mars has been 84% terraformed, allowing humans to walk on the surface without pressure suits. Martian society has become matriarchal, with women in most positions of authority. The story concerns police officer Melanie Ballard (Natasha Henstridge), second in command of a team... | Ghosts of Mars | 43b629d6-29b2-473a-4f09-9302c17ddd24 | Where is Melanie Ballard? | [
"in the hospital",
"in a remote mining town in mars"
] | false |
/m/03vyhn | Set in the second half of the 22nd century, Mars has been 84% terraformed, allowing humans to walk on the surface without pressure suits. Martian society has become matriarchal, with women in most positions of authority. The story concerns police officer Melanie Ballard (Natasha Henstridge), second in command of a team... | Ghosts of Mars | d73065ee-964b-aae9-0420-a62c507b63ed | How did the police arrive at the Mars mining camp? | [
"Space ship",
"Train"
] | false |
/m/03vyhn | Set in the second half of the 22nd century, Mars has been 84% terraformed, allowing humans to walk on the surface without pressure suits. Martian society has become matriarchal, with women in most positions of authority. The story concerns police officer Melanie Ballard (Natasha Henstridge), second in command of a team... | Ghosts of Mars | 518eaeb8-05bd-5d29-db2f-1d86ea218034 | What is the problem with the miners | [
"possessed",
"their body's were taken over by the spirits"
] | false |
/m/03vyhn | Set in the second half of the 22nd century, Mars has been 84% terraformed, allowing humans to walk on the surface without pressure suits. Martian society has become matriarchal, with women in most positions of authority. The story concerns police officer Melanie Ballard (Natasha Henstridge), second in command of a team... | Ghosts of Mars | d620a095-ac3b-bd9e-0abf-07c9edf69b18 | When does this story take place | [
"22nd century",
"Future"
] | false |
/m/03vyhn | Set in the second half of the 22nd century, Mars has been 84% terraformed, allowing humans to walk on the surface without pressure suits. Martian society has become matriarchal, with women in most positions of authority. The story concerns police officer Melanie Ballard (Natasha Henstridge), second in command of a team... | Ghosts of Mars | b97a0bd9-3930-6f2c-ebb4-f882a22c764a | Which two people reach the headquarters alive? | [
"Melanie Ballard and Sergeant Jericho"
] | false |
/m/03vyhn | Set in the second half of the 22nd century, Mars has been 84% terraformed, allowing humans to walk on the surface without pressure suits. Martian society has become matriarchal, with women in most positions of authority. The story concerns police officer Melanie Ballard (Natasha Henstridge), second in command of a team... | Ghosts of Mars | 5391d81b-b576-0123-4d06-9f508a471b30 | Who survives leaving the mining camp and the prison? | [
"Williams (ice cube)"
] | false |
/m/03vyhn | Set in the second half of the 22nd century, Mars has been 84% terraformed, allowing humans to walk on the surface without pressure suits. Martian society has become matriarchal, with women in most positions of authority. The story concerns police officer Melanie Ballard (Natasha Henstridge), second in command of a team... | Ghosts of Mars | 1746e651-10a9-a2d0-3dcc-c4dfcca140db | Who is the only prisoner in the camp? | [
"Ballard",
"Desolation Williams"
] | false |
/m/03vyhn | Set in the second half of the 22nd century, Mars has been 84% terraformed, allowing humans to walk on the surface without pressure suits. Martian society has become matriarchal, with women in most positions of authority. The story concerns police officer Melanie Ballard (Natasha Henstridge), second in command of a team... | Ghosts of Mars | 93aec55b-e0ab-948b-fe69-ee994ea61969 | How do Melanie and the police officers arrive to the Mars mining camp? | [
"They had discovered an underground doorway created by an ancient Martian civilization."
] | false |
/m/03vyhn | Set in the second half of the 22nd century, Mars has been 84% terraformed, allowing humans to walk on the surface without pressure suits. Martian society has become matriarchal, with women in most positions of authority. The story concerns police officer Melanie Ballard (Natasha Henstridge), second in command of a team... | Ghosts of Mars | 097c8618-7790-b45d-e4d3-739152fc9104 | Who has colonized Mars 200 years in the future? | [
"Humans"
] | false |
/m/03vyhn | Set in the second half of the 22nd century, Mars has been 84% terraformed, allowing humans to walk on the surface without pressure suits. Martian society has become matriarchal, with women in most positions of authority. The story concerns police officer Melanie Ballard (Natasha Henstridge), second in command of a team... | Ghosts of Mars | 0167b6c2-8490-211f-b587-a5de08972536 | What else reaches the headquarters along with them? | [] | true |
/m/03vyhn | Set in the second half of the 22nd century, Mars has been 84% terraformed, allowing humans to walk on the surface without pressure suits. Martian society has become matriarchal, with women in most positions of authority. The story concerns police officer Melanie Ballard (Natasha Henstridge), second in command of a team... | Ghosts of Mars | 55c37309-fe98-3fcc-748e-0aad8a18c66a | Who melanie and the policemen meet? | [
"the missing people"
] | false |
/m/03vyhn | Set in the second half of the 22nd century, Mars has been 84% terraformed, allowing humans to walk on the surface without pressure suits. Martian society has become matriarchal, with women in most positions of authority. The story concerns police officer Melanie Ballard (Natasha Henstridge), second in command of a team... | Ghosts of Mars | edd806e3-68a5-fd9a-9142-2320984768da | Who is the only person left at the camp? | [
"Ballard"
] | false |
/m/03vyhn | Set in the second half of the 22nd century, Mars has been 84% terraformed, allowing humans to walk on the surface without pressure suits. Martian society has become matriarchal, with women in most positions of authority. The story concerns police officer Melanie Ballard (Natasha Henstridge), second in command of a team... | Ghosts of Mars | 8a4f6f3c-5e34-4768-82c4-e9768831b130 | What color was the dust when unleashed? | [
"red color"
] | false |
/m/0994bg | The film starts on December 12th, 2001 with a young girl named Noriko Shimabara (Kazue Fukiishi) arriving at Tokyo Station with a bag of rolling luggage. She walks upto Ginza, 'pretending to have returned from a long trip'.Chapter 1: NorikoNoriko describes her family: a father (Ken Mitsuishi), a mother (Sanae Miyata) a... | Noriko's Dinner Table | 3f917370-6184-69e4-9d00-904c7e720324 | How many years have passed by the end of the film? | [
"One year (December 2001-May 2002).",
"Two years.",
"2",
"Two and a half maybe three years."
] | false |
/m/0994bg | The film starts on December 12th, 2001 with a young girl named Noriko Shimabara (Kazue Fukiishi) arriving at Tokyo Station with a bag of rolling luggage. She walks upto Ginza, 'pretending to have returned from a long trip'.Chapter 1: NorikoNoriko describes her family: a father (Ken Mitsuishi), a mother (Sanae Miyata) a... | Noriko's Dinner Table | f430b517-d3b8-f4a5-8703-0e73ffa46e27 | What is the cult's name? | [
"Haikyo.com",
"Suicide Club.",
"Suicide Club"
] | false |
/m/0994bg | The film starts on December 12th, 2001 with a young girl named Noriko Shimabara (Kazue Fukiishi) arriving at Tokyo Station with a bag of rolling luggage. She walks upto Ginza, 'pretending to have returned from a long trip'.Chapter 1: NorikoNoriko describes her family: a father (Ken Mitsuishi), a mother (Sanae Miyata) a... | Noriko's Dinner Table | aa7c813d-ca80-30b4-6794-603f40a59016 | What is the shy, teenage girl's name? | [
"Noriko",
"Mitsuko"
] | false |
/m/0994bg | The film starts on December 12th, 2001 with a young girl named Noriko Shimabara (Kazue Fukiishi) arriving at Tokyo Station with a bag of rolling luggage. She walks upto Ginza, 'pretending to have returned from a long trip'.Chapter 1: NorikoNoriko describes her family: a father (Ken Mitsuishi), a mother (Sanae Miyata) a... | Noriko's Dinner Table | 9bdadd96-0738-fcd8-93bd-542bf32a6885 | Who commits suicide? | [
"54 schoolgirls",
"Mitsuko",
"Taeko"
] | false |
/m/0994bg | The film starts on December 12th, 2001 with a young girl named Noriko Shimabara (Kazue Fukiishi) arriving at Tokyo Station with a bag of rolling luggage. She walks upto Ginza, 'pretending to have returned from a long trip'.Chapter 1: NorikoNoriko describes her family: a father (Ken Mitsuishi), a mother (Sanae Miyata) a... | Noriko's Dinner Table | cebb40e1-892b-1b1c-814c-23bc7bf39a10 | How many girls jump in front of the train? | [
"54",
"54 girls jump in front of the train"
] | false |
/m/0994bg | The film starts on December 12th, 2001 with a young girl named Noriko Shimabara (Kazue Fukiishi) arriving at Tokyo Station with a bag of rolling luggage. She walks upto Ginza, 'pretending to have returned from a long trip'.Chapter 1: NorikoNoriko describes her family: a father (Ken Mitsuishi), a mother (Sanae Miyata) a... | Noriko's Dinner Table | 388fe7ec-3650-2d0c-029c-3bea1a6150d4 | who who attacks them with a knife ? | [
"No knife attack mentioned",
"Tetsuzo"
] | false |
/m/0994bg | The film starts on December 12th, 2001 with a young girl named Noriko Shimabara (Kazue Fukiishi) arriving at Tokyo Station with a bag of rolling luggage. She walks upto Ginza, 'pretending to have returned from a long trip'.Chapter 1: NorikoNoriko describes her family: a father (Ken Mitsuishi), a mother (Sanae Miyata) a... | Noriko's Dinner Table | e46878a4-0d9d-a467-a328-60cd20c70885 | In which train station does Noriko meet Ueno54? | [
"Ueno",
"Uneo's Station",
"not mentioed",
"Niriko meets Ueno Station 54 (not Ueno54) in Ueno Station"
] | false |
YAML Metadata Warning:The task_categories "text2text-generation" is not in the official list: text-classification, token-classification, table-question-answering, question-answering, zero-shot-classification, translation, summarization, feature-extraction, text-generation, fill-mask, sentence-similarity, text-to-speech, text-to-audio, automatic-speech-recognition, audio-to-audio, audio-classification, audio-text-to-text, voice-activity-detection, depth-estimation, image-classification, object-detection, image-segmentation, text-to-image, image-to-text, image-to-image, image-to-video, unconditional-image-generation, video-classification, reinforcement-learning, robotics, tabular-classification, tabular-regression, tabular-to-text, table-to-text, multiple-choice, text-ranking, text-retrieval, time-series-forecasting, text-to-video, image-text-to-text, image-text-to-image, image-text-to-video, visual-question-answering, document-question-answering, zero-shot-image-classification, graph-ml, mask-generation, zero-shot-object-detection, text-to-3d, image-to-3d, image-feature-extraction, video-text-to-text, keypoint-detection, visual-document-retrieval, any-to-any, video-to-video, other
Dataset Card for duorc
Dataset Summary
The DuoRC dataset is an English language dataset of questions and answers gathered from crowdsourced AMT workers on Wikipedia and IMDb movie plots. The workers were given freedom to pick answer from the plots or synthesize their own answers. It contains two sub-datasets - SelfRC and ParaphraseRC. SelfRC dataset is built on Wikipedia movie plots solely. ParaphraseRC has questions written from Wikipedia movie plots and the answers are given based on corresponding IMDb movie plots.
Supported Tasks and Leaderboards
abstractive-qa: The dataset can be used to train a model for Abstractive Question Answering. An abstractive question answering model is presented with a passage and a question and is expected to generate a multi-word answer. The model performance is measured by exact-match and F1 score, similar to SQuAD V1.1 or SQuAD V2. A BART-based model with a dense retriever may be used for this task.extractive-qa: The dataset can be used to train a model for Extractive Question Answering. An extractive question answering model is presented with a passage and a question and is expected to predict the start and end of the answer span in the passage. The model performance is measured by exact-match and F1 score, similar to SQuAD V1.1 or SQuAD V2. BertForQuestionAnswering or any other similar model may be used for this task.
Languages
The text in the dataset is in English, as spoken by Wikipedia writers for movie plots. The associated BCP-47 code is en.
Dataset Structure
Data Instances
{'answers': ['They arrived by train.'], 'no_answer': False, 'plot': "200 years in the future, Mars has been colonized by a high-tech company.\nMelanie Ballard (Natasha Henstridge) arrives by train to a Mars mining camp which has cut all communication links with the company headquarters. She's not alone, as she is with a group of fellow police officers. They find the mining camp deserted except for a person in the prison, Desolation Williams (Ice Cube), who seems to laugh about them because they are all going to die. They were supposed to take Desolation to headquarters, but decide to explore first to find out what happened.They find a man inside an encapsulated mining car, who tells them not to open it. However, they do and he tries to kill them. One of the cops witnesses strange men with deep scarred and heavily tattooed faces killing the remaining survivors. The cops realise they need to leave the place fast.Desolation explains that the miners opened a kind of Martian construction in the soil which unleashed red dust. Those who breathed that dust became violent psychopaths who started to build weapons and kill the uninfected. They changed genetically, becoming distorted but much stronger.The cops and Desolation leave the prison with difficulty, and devise a plan to kill all the genetically modified ex-miners on the way out. However, the plan goes awry, and only Melanie and Desolation reach headquarters alive. Melanie realises that her bosses won't ever believe her. However, the red dust eventually arrives to headquarters, and Melanie and Desolation need to fight once again.", 'plot_id': '/m/03vyhn', 'question': 'How did the police arrive at the Mars mining camp?', 'question_id': 'b440de7d-9c3f-841c-eaec-a14bdff950d1', 'title': 'Ghosts of Mars'}
Data Fields
plot_id: astringfeature containing the movie plot ID.plot: astringfeature containing the movie plot text.title: astringfeature containing the movie title.question_id: astringfeature containing the question ID.question: astringfeature containing the question text.answers: alistofstringfeatures containing list of answers.no_answer: aboolfeature informing whether the question has no answer or not.
Data Splits
The data is split into a training, dev and test set in such a way that the resulting sets contain 70%, 15%, and 15% of the total QA pairs and no QA pairs for any movie seen in train are included in the test set. The final split sizes are as follows:
Name Train Dec Test SelfRC 60721 12961 12599 ParaphraseRC 69524 15591 15857
Dataset Creation
Curation Rationale
[Needs More Information]
Source Data
Wikipedia and IMDb movie plots
Initial Data Collection and Normalization
[Needs More Information]
Who are the source language producers?
[Needs More Information]
Annotations
Annotation process
For SelfRC, the annotators were allowed to mark an answer span in the plot or synthesize their own answers after reading Wikipedia movie plots. For ParaphraseRC, questions from the Wikipedia movie plots from SelfRC were used and the annotators were asked to answer based on IMDb movie plots.
Who are the annotators?
Amazon Mechanical Turk Workers
Personal and Sensitive Information
[Needs More Information]
Considerations for Using the Data
Social Impact of Dataset
[Needs More Information]
Discussion of Biases
[Needs More Information]
Other Known Limitations
[Needs More Information]
Additional Information
Dataset Curators
The dataset was intially created by Amrita Saha, Rahul Aralikatte, Mitesh M. Khapra, and Karthik Sankaranarayanan in a collaborated work between IIT Madras and IBM Research.
Licensing Information
Citation Information
@inproceedings{DuoRC,
author = { Amrita Saha and Rahul Aralikatte and Mitesh M. Khapra and Karthik Sankaranarayanan},
title = {{DuoRC: Towards Complex Language Understanding with Paraphrased Reading Comprehension}},
booktitle = {Meeting of the Association for Computational Linguistics (ACL)},
year = {2018}
}
Contributions
Thanks to @gchhablani for adding this dataset.
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