elliot.dataset.dataloader package

Submodules

elliot.dataset.dataloader.knowledge_aware_chains module

Module description:

class elliot.dataset.dataloader.knowledge_aware_chains.KnowledgeChainsDataObject(config, data_tuple, side_information_data, *args, **kwargs)[source]

Bases: object

Load train and test dataset

build_dict(dataframe, users)[source]
build_sparse()[source]
build_sparse_ratings()[source]
dataframe_to_dict(data)[source]
get_test()[source]
get_validation()[source]
class elliot.dataset.dataloader.knowledge_aware_chains.KnowledgeChainsLoader(config, *args, **kwargs)[source]

Bases: object

Load train and test dataset

check_timestamp(d: pandas.DataFrame)pandas.DataFrame[source]
generate_dataobjects()List[object][source]
generate_dataobjects_mock()List[object][source]
load_attribute_file(attribute_file, separator='\t')[source]
load_dataset_dataframe(file_ratings, separator='\t', attribute_file=None, feature_file=None, properties_file=None, column_names=['userId', 'itemId', 'rating', 'timestamp'], additive=True, threshold=10)[source]
load_dataset_dict(file_ratings, separator='\t', attribute_file=None, feature_file=None, properties_file=None, additive=True, threshold=10)[source]
load_feature_names(infile, separator='\t')[source]
load_item_set(ratings_file, separator='\t', itemPosition=1)[source]
load_properties(properties_file)[source]
read_splitting(folder_path)[source]
reduce_attribute_map_property_selection(map, items, feature_names, properties, additive, threshold=10)[source]
reduce_dataset_by_item_list(ratings_file, items, separator='\t')[source]

elliot.dataset.dataloader.visual_dataloader module

Module description:

class elliot.dataset.dataloader.visual_dataloader.VisualDataObject(config, data_tuple, side_information_data, *args, **kwargs)[source]

Bases: object

Load train and test dataset

build_dict(dataframe, users)[source]
build_sparse()[source]
build_sparse_ratings()[source]
dataframe_to_dict(data)[source]
get_test()[source]
get_validation()[source]
read_images(images_folder, image_set, size_tuple)[source]
read_images_multiprocessing(images_folder, image_set, size_tuple)[source]
static read_single_image(images_folder, image_set, size_tuple, image_path)[source]
class elliot.dataset.dataloader.visual_dataloader.VisualLoader(config, *args, **kwargs)[source]

Bases: object

Load train and test dataset

check_timestamp(d: pandas.DataFrame)pandas.DataFrame[source]
generate_dataobjects()List[object][source]
generate_dataobjects_mock()List[object][source]
load_dataset_dataframe(file_ratings, separator='\t', visual_feature_set=None, column_names=['userId', 'itemId', 'rating', 'timestamp'])[source]
read_splitting(folder_path)[source]
reduce_dataset_by_item_list(ratings_file, items, separator='\t')[source]

Module contents