Permission to make digital or hard copies of part or all of this work for personal or classroom use is granted without fee provided that copies are not made or distributed for profit or commercial advantage and that copies bear this notice and the full citation below. Copyrights for third-party components of this work must be honored. For all other uses, contact the owner/author(s). Copyright held by the owner/author(s). Please cite the paper below in case you use the data: @inproceedings{rozen-etal-2021-answering, title = "Answering Product-Questions by Utilizing Questions from Other Contextually Similar Products", author = "Rozen, Ohad and Carmel, David and Mejer, Avihai and Mirkis, Vitaly and Ziser, Yftah", booktitle = "Proceedings of the 2021 Conference of the North American Chapter of the Association for Computational Linguistics: Human Language Technologies", month = jun, year = "2021", address = "Online", publisher = "Association for Computational Linguistics", url = https://www.aclweb.org/anthology/2021.naacl-main.23, pages = "242--253", abstract = "Predicting the answer to a product-related question is an emerging field of research that recently attracted a lot of attention. Answering subjective and opinion-based questions is most challenging due to the dependency on customer generated content. Previous works mostly focused on review-aware answer prediction; however, these approaches fail for new or unpopular products, having no (or only a few) reviews at hand. In this work, we propose a novel and complementary approach for predicting the answer for such questions, based on the answers for similar questions asked on similar products. We measure the contextual similarity between products based on the answers they provide for the same question. A mixture-of-expert framework is used to predict the answer by aggregating the answers from contextually similar products. Empirical results demonstrate that our model outperforms strong baselines on some segments of questions, namely those that have roughly ten or more similar resolved questions in the corpus. We additionally publish two large-scale datasets used in this work, one is of similar product question pairs, and the second is of product question-answer pairs.", } The data is organized by categories. A data entry is composed of the following fields: question_id: Question identifier question_text: Full question text answer_text: Full answer text asin_id: Product identifier bullet_points: Products bullet points product_description: A product description brand_name: Product brand name item_name: Product title is_yes-no_question: Question type classification yes-no_answer: Answer prediction Data can be obtained using: 1. Direct access links (2.1 GB compressed, 17.3 GB uncompressed): https://amazon-pqa.s3.amazonaws.com/amazon-pqa.tar.gz 2. Direct access links (by category): https://amazon-pqa.s3.amazonaws.com/amazon_pqa_accessories.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_activity_&_fitness_trackers.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_adapters.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_amazon_echo_&_alexa_devices.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_area_rugs.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_backpacks.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_basic_cases.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_batteries.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_battery_chargers.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_bed_frames.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_beds.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_bullet_cameras.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_camcorders.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_car.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_carrier_cell_phones.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_car_stereo_receivers.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_cases.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_casual.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_chairs.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_chargers_&_adapters.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_code_readers_&_scan_tools.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_computer_cases.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_consoles.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_costumes.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_cradles.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_diffusers.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_dolls.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_dome_cameras.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_earbud_headphones.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_external_hard_drives.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_fashion_sneakers.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_floor_mats.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_food_storage_&_organization_sets.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_games.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_graphics_cards.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_gun_holsters.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_hair_extensions.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_handheld_flashlights.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_headlight_assemblies.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_headlight_bulbs.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_headlight_&_tail_light_conversion_kits.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_headsets.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_hidden_cameras.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_home_office_desks.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_home_security_systems.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_in-dash_dvd_&_video_receivers.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_in-dash_navigation.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_inkjet_printers.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_jeans.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_keyboards.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_landline_phones.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_led_bulbs.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_led_&_lcd_tvs.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_led_strip_lights.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_light_bars.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_masks.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_mattresses.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_memory.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_monitors.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_motherboards.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_mp3_&_mp4_players.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_on-dash_cameras.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_over-ear_headphones.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_panels.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_pants.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_portable_bluetooth_speakers.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_posters_&_prints.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_power_converters.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_pumps.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_quadcopters_&_multirotors.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_receivers.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_remote_controls.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_repellents.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_routers.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_screen_protectors.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_sets.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_sheet_&_pillowcase_sets.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_slr_camera_lenses.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_smartwatches.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_sound_bars.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_sports_&_action_video_cameras.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_sports_water_bottles.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_stands.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_streaming_media_players.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_string_lights.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_sunglasses.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_surveillance_dvr_kits.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_tablets.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_towers.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_traditional_laptops.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_t-shirts.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_tv_antennas.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_tv_ceiling_&_wall_mounts.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_unlocked_cell_phones.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_usb_cables.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_usb_flash_drives.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_vehicle_backup_cameras.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_video_projectors.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_wigs.json https://amazon-pqa.s3.amazonaws.com/amazon_pqa_wrist_watches.json