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--- |
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license: mit |
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widget: |
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- text: "What is or could be the cause of target? <sep> target: Thanks. Will I be able to take a retest ? <sep> context: A: Did I do well on my test ?, <utt> B: Do you want to know the honest answer ?, <utt> A: Why wouldn't I want to know ?, <utt> B: You had pretty bad scores ., <utt> A: Exactly what do you mean by bad ?, <utt> B: You failed ., <utt> A: How'd I fail it ?, <utt> B: There are a couple of reasons why you didn't pass ., <utt> A: What did I do wrong ?, <utt> B: To sum it all up , you really just don't know how to drive ., <utt> A: Thanks. Will I be able to take a retest ?, <utt> B: Sure you can , in about two and a half weeks . " |
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example_title: "Cause 1" |
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- text: "What is or could be the cause of target? <sep> target: But she did and made me disappointed . <sep> context: A: David , why didn't you clean the room ?, <utt> B: I'm not in the mood ., <utt> A: Why are you feeling depressed ?, <utt> B: I was told my girlfriend was speaking ill of me. That's a real let-down ., <utt> A: I don t think she will do such a thing ., <utt> B: But she did and made me disappointed ., <utt> A: Oh , cheer up . A girlfriend is not everything ., <utt> B: But she means a lot to me ., <utt> A: Then forgive her mistake ., <utt> B: Oh . I just can't forget it " |
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example_title: "Cause 2" |
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- text: "What subsequent event happens or could happen following the target? <sep> target: Oh . I just can't forget it .<sep> context: A: David , why didn't you clean the room ?, <utt> B: I'm not in the mood ., <utt> A: Why are you feeling depressed ?, <utt> B: I was told my girlfriend was speaking ill of me. That \u2019 s a real let-down ., <utt> A: I don t think she will do such a thing ., <utt> B: But she did and made me disappointed ., <utt> A: Oh , cheer up . A girlfriend is not everything ., <utt> B: But she means a lot to me ., <utt> A: Then forgive her mistake ., <utt> B: Oh . I just can't forget it " |
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example_title: "Subsequent Event 1" |
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- text: "What subsequent event happens or could happen following the target? <sep> target: Sure you can , in about two and a half weeks . <sep> context: A: Did I do well on my test ?, <utt> B: Do you want to know the honest answer ?, <utt> A: Why wouldn't I want to know ?, <utt> B: You had pretty bad scores ., <utt> A: Exactly what do you mean by bad ?, <utt> B: You failed ., <utt> A: How'd I fail it ?, <utt> B: There are a couple of reasons why you didn't pass ., <utt> A: What did I do wrong ?, <utt> B: To sum it all up , you really just don't know how to drive ., <utt> A: Thanks. Will I be able to take a retest ?, <utt> B: Sure you can , in about two and a half weeks . " |
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example_title: "Subsequent Event 2" |
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- text: "What is the possible emotional reaction of the listener in response to target? <sep> target: Oh . I just can't forget it .<sep> context: A: David , why didn't you clean the room ?, <utt> B: I'm not in the mood ., <utt> A: Why are you feeling depressed ?, <utt> B: I was told my girlfriend was speaking ill of me. That \u2019 s a real let-down ., <utt> A: I don t think she will do such a thing ., <utt> B: But she did and made me disappointed ., <utt> A: Oh , cheer up . A girlfriend is not everything ., <utt> B: But she means a lot to me ., <utt> A: Then forgive her mistake ., <utt> B: Oh . I just can't forget it " |
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example_title: "Emotional Reaction" |
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- text: "What is or could be the motivation of target? <sep> target: Sure you can , in about two and a half weeks . <sep> context: A: Did I do well on my test ?, <utt> B: Do you want to know the honest answer ?, <utt> A: Why wouldn't I want to know ?, <utt> B: You had pretty bad scores ., <utt> A: Exactly what do you mean by bad ?, <utt> B: You failed ., <utt> A: How'd I fail it ?, <utt> B: There are a couple of reasons why you didn't pass ., <utt> A: What did I do wrong ?, <utt> B: To sum it all up , you really just don't know how to drive ., <utt> A: Thanks. Will I be able to take a retest ?, <utt> B: Sure you can , in about two and a half weeks . " |
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example_title: "Motivation" |
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--- |
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## DIALogue-level Commonsense Transformer (DIALeCT) |
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The pretrained checkpoint for the paper [Multiview Contextual Commonsense Inference: A New Dataset and Task](https://arxiv.org/abs/2210.02890). |
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The model is trained based on the [T5-large](https://huggingface.co/t5-large) checkpoint. |
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## Datasets |
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The dataset used to pretrain the model can be obtained from the [CICERO repo](https://github.com/declare-lab/CICERO) following instructions. The Contextualized Commonsense Inference in Dialogues v2 (CICEROv2) consists of annotated commonsense inferences including cause and emotional reaction, etc. The dialogues are from multiple datasets. |
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| Dataset | #Dialogues| #Instances| |
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| -------- | ----- | --------- | |
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| DailyDialog| 1118| 3973| |
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| MuTual| 1011 | 3384| |
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| Dream| 250 | 994| |
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### Examples |
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Some examples of generated results from the pretrained model (the zero-shot setting). |
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**Subsequent Event** |
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``` |
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What is or could be the subsequent event of the target? <sep> |
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target: Oh . I just can't forget it .<sep> |
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context: A: David , why didn't you clean the room ?, <utt> |
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B: I'm not in the mood ., <utt> |
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A: Why are you feeling depressed ?, <utt> |
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B: I was told my girlfriend was speaking ill of me. That \u2019 s a real let-down ., <utt> |
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A: I don t think she will do such a thing ., <utt> |
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B: But she did and made me disappointed ., <utt> |
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A: Oh , cheer up . A girlfriend is not everything ., <utt> |
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B: But she means a lot to me ., <utt> |
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A: Then forgive her mistake ., <utt> |
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B: Oh . I just can't forget it |
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``` |
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Predicted subsequent event: |
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``` |
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David's girlfriend apologized to david for her mistake. |
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``` |
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**Cause** |
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``` |
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What is or could be the cause of target? <sep> |
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target: Thanks. Will I be able to take a retest ? <sep> |
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context: A: Did I do well on my test ?, <utt> |
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B: Do you want to know the honest answer ?, <utt> |
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A: Why wouldn't I want to know ?, <utt> |
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B: You had pretty bad scores ., <utt> |
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A: Exactly what do you mean by bad ?, <utt> |
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B: You failed ., <utt> |
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A: How'd I fail it ?, <utt> |
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B: There are a couple of reasons why you didn't pass ., <utt> |
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A: What did I do wrong ?, <utt> |
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B: To sum it all up , you really just don't know how to drive ., <utt> |
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A: Thanks. Will I be able to take a retest ?, <utt> |
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B: Sure you can , in about two and a half weeks . |
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``` |
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Predicted cause: |
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``` |
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The speaker has failed the driving test. |
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``` |
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**Emotional Reaction** |
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``` |
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What is the possible emotional reaction of the listener in response to target? <sep> |
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target: Oh . I just can't forget it .<sep> |
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context: A: David , why didn't you clean the room ?, <utt> |
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B: I'm not in the mood ., <utt> |
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A: Why are you feeling depressed ?, <utt> |
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B: I was told my girlfriend was speaking ill of me. That \u2019 s a real let-down ., <utt> |
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A: I don t think she will do such a thing ., <utt> |
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B: But she did and made me disappointed ., <utt> |
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A: Oh , cheer up . A girlfriend is not everything ., <utt> |
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B: But she means a lot to me ., <utt> |
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A: Then forgive her mistake ., <utt> |
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B: Oh . I just can't forget it |
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``` |
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Predicted emotional reaction: |
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``` |
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The listener is hopeful that david will forgive his girlfriend for her mistake. |
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``` |
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## Inference: |
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The input text should be formatted as follows: |
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``` |
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Question <sep> target: target_utt <sep> context: A: utterance 1 <utt> B: utterance 2 <utt> A: utterance 3 <utt> B: utterance 4 |
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``` |
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Question: The question against which we want to make the inference. |
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A, B are speaker identifiers |
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The ```target_utt``` should be anyone between ```utterance 1, utterance 2, utterance 3, or utterance 4```. Do not use the speaker identifier in the ```target_utt``` |
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Some samples are provided in the Hosted inference API box examples. |
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## BibTeX entry and citation info |
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If you use the model, you can cite: |
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```bibtex |
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@article{Shen2022MultiviewCC, |
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title={Multiview Contextual Commonsense Inference: A New Dataset and Task}, |
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author={Siqi Shen and Deepanway Ghosal and Navonil Majumder and Henry Lim and Rada Mihalcea and Soujanya Poria}, |
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journal={ArXiv}, |
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year={2022}, |
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volume={abs/2210.02890} |
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} |
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``` |