Skip to content

Latest commit

 

History

History
 
 

conversational-recommendation-dialogues

Folders and files

NameName
Last commit message
Last commit date

parent directory

..
 
 
 
 
 
 
 
 
 
 

Conversational Recommendation Dialogues

Conversational Recommendation Dialogues follow same format as task oriented dialogues. Below is the copy of ReadME from task oriented dialogues:

Below is a general format for task oriented dialogues:

{
    "dataset_name--train/val/test--dialog_id": {
        "original dialog id": str,
        "dialog index": int,
        "original dialog info": dict,
        "log": [
            {
                "turn id": int,
                "user utterance": str,
                "system response": str,
                "dialog history": str,
                "original user side information": dict,
                "original system side information": dict,
                "dst": str,
                "dst accumulated": str
            },
         	...
        ],
        "external knowledge non-flat": {
            "metadata": dict,
            "slots and values": dict
            "intents": dict,
            ...
        },
        "external knowledge": str,
        "intent knowledge": str,
        "prompt": [
            "This is a bot helping users to get navigation. Given the dialog context and external database, please generate a relevant system response for the user.",
            ...
        ]
    },
    ...
}

In general, datasets have the "external knowledge non-flat" and "external knowledge" in the whole dialogue level. There are also some datasets where every turn in "log" has own "external knowledge non-flat" and "external knowledge".

Here are datasets with turn-level "external knowledge":

'SimJointGEN', 'BiTOD', 'OpenDialKG', 'SimJointMovie', 'MS-DC', 'STAR', 'SimJointRestaurant', 'Taskmaster1', 'Taskmaster2', 'Taskmaster3'

And below is a general format for such datasets:

{
    "dataset_name--train/val/test--dialog_id": {
        "original dialog id": str,
        "dialog index": int,
        "original dialog info": dict,
        "log": [
            {
                "turn id": int,
                "user utterance": str,
                "system response": str,
                "dialog history": str,
                "original user side information": dict,
                "original system side information": dict,
                "dst": str,
                "dst accumulated": str
                "external knowledge non-flat": list,
                "external knowledge": str,
            },
         	...
        ]
        "prompt": [
            "This is a bot helping users to get navigation. Given the dialog context and external database, please generate a relevant system response for the user.",
            ...
        ]
    },
    ...
}

Please refer to each dataset folder for more details.