Gaze4Hate#
- class pymovements.datasets.Gaze4Hate(name: str = 'Gaze4Hate', long_name: str = 'Gaze4Hate dataset', mirrors: dict[str, Sequence[str]] = <factory>, resources: ResourceDefinitions = <factory>, experiment: Experiment = <factory>, extract: dict[str, bool] | None = None, custom_read_kwargs: dict[str, dict[str, Any]] = <factory>, column_map: dict[str, str] = <factory>, trial_columns: list[str] = <factory>, time_column: str | None = None, time_unit: str | None = None, pixel_columns: list[str] | None = None, position_columns: list[str] | None = None, velocity_columns: list[str] | None = None, acceleration_columns: list[str] | None = None, distance_column: str | None = None, filename_format: dict[str, str] | None = None, filename_format_schema_overrides: dict[str, dict[str, type]] | None = None)[source]#
Gaze4Hate dataset [Alacam et al., 2024].
This dataset includes monocular eye tracking data from 43 participants annotating sentences for hate speech. Eye movements are recorded at a sampling frequency of 1,000 Hz using an EyeLink 1000 Plus eye tracker and are provided as pixel coordinates.
Check the respective paper for details [Alacam et al., 2024].
- name#
The name of the dataset.
- Type:
str
- long_name#
The entire name of the dataset.
- Type:
str
- resources#
A list of dataset gaze_resources. Each list entry must be a dictionary with the following keys: - resource: The url suffix of the resource. This will be concatenated with the mirror. - filename: The filename under which the file is saved as. - md5: The MD5 checksum of the respective file.
- Type:
- experiment#
The experiment definition.
- Type:
- filename_format#
Regular expression which will be matched before trying to load the file. Namedgroups will appear in the fileinfo dataframe.
- Type:
dict[str, str] | None
- filename_format_schema_overrides#
If named groups are present in the filename_format, this makes it possible to cast specific named groups to a particular datatype.
- Type:
dict[str, dict[str, type]] | None
- trial_columns#
The name of the trial columns in the input data frame. If the list is empty or None, the input data frame is assumed to contain only one trial. If the list is not empty, the input data frame is assumed to contain multiple trials and the transformation methods will be applied to each trial separately.
- Type:
list[str]
- custom_read_kwargs#
If specified, these keyword arguments will be passed to the file reading function.
- Type:
dict[str, dict[str, Any]]
Examples
Initialize your
Dataset
object with theGaze4Hate
definition:>>> import pymovements as pm >>> >>> dataset = pm.Dataset("Gaze4Hate", path='data/Gaze4Hate')
Download the dataset resources:
>>> dataset.download()
Load the data into memory:
>>> dataset.load()
Methods
__init__
([name, long_name, mirrors, ...])from_yaml
(path)Load a dataset definition from a YAML file.
to_dict
(*[, exclude_private, exclude_none])Return dictionary representation.
to_yaml
(path, *[, exclude_private, exclude_none])Save a dataset definition to a YAML file.
Attributes
acceleration_columns
distance_column
extract
has_resources
Checks for resources in
resources
.pixel_columns
position_columns
time_column
time_unit
velocity_columns
mirrors
column_map