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MT-Mind2Web Dataset

MT-Mind2Web is constructed by using the single-turn interactions from Mind2Web, an expert-annotated web navigation dataset, as the guidance to construct conversation sessions.

Statistics

Train Test-Task Test-Website Test-Subdomain
# Conversations 600 34 42 44
# Turns 2,896 191 218 216
Avg. # Turn/Conv. 4.83 5.62 5.19 4.91
Avg. # Action/Turn 2.95 3.16 3.01 3.07
Avg. # Element/Turn 573.8 626.3 620.6 759.4
Avg. Inst. Length 36.3 37.4 39.8 36.2
Avg. HTML Length 169K 195K 138K 397K

Dataset Structure

  • "task_id" (str): unique id for each task
  • "website" (str): website name
  • "domain" (str): website domain
  • "subdomain" (str): website subdomain
  • "turns" (list[dict]): list of subtasks
    • "annotation_id" (str): unique id for each subtask
    • "confirmed_task" (str): subtask description
    • "action_reprs" (list[str]): human readable string representation of the action sequence
    • "actions" (list[dict]): list of actions (steps) to complete the subtask
      • "action_uid" (str): unique id for each action (step)
      • "raw_html" (str): raw html of the page before the action is performed
      • "cleaned_html" (str): cleaned html of the page before the action is performed
      • "operation" (dict): operation to perform
        • "op" (str): operation type, one of CLICK, TYPE, SELECT
        • "original_op" (str): original operation type, contain additional HOVER and ENTER that are mapped to CLICK, not used
        • "value" (str): optional value for the operation, e.g., text to type, option to select
      • "pos_candidates" (list[dict]): ground truth elements. Here we only include positive elements that exist in "cleaned_html" after our preprocessing, so "pos_candidates" might be empty. The original labeled element can always be found in the "raw_html".
        • "tag" (str): tag of the element
        • "is_original_target" (bool): whether the element is the original target labeled by the annotator
        • "is_top_level_target" (bool): whether the element is a top level target find by our algorithm. please see the paper for more details.
        • "backend_node_id" (str): unique id for the element
        • "attributes" (str): serialized attributes of the element, use json.loads to convert back to dict
      • "neg_candidates" (list[dict]): other candidate elements in the page after preprocessing, has similar structure as "pos_candidates"
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