--- license: mit task_categories: - question-answering --- # PageGuide Dataset This repository contains the dataset artifacts for **PageGuide**, a browser extension to assist users in navigating a webpage and locating information. - **Project Page:** https://pageguide.github.io/ - **Paper:** [PageGuide: Browser extension to assist users in navigating a webpage and locating information](https://huggingface.co/papers/2604.23772) - **Code:** https://github.com/tin-xai/pageguide --- ## Dataset Subsets The PageGuide project releases several datasets for evaluation and research: ### 1. `pageguide_userstudy` Raw interaction logs from the user study — completion times, chat transcripts, correctness labels, paired statistical results, and post-study survey responses. ### 2. `pageguide_find_data` Task stimuli for the **Find** condition — 10 real webpages (NASA, Wikipedia, Cleveland Clinic, WWF, Britannica, JMLR) each annotated with up to 2 factual questions, ground-truth answers, and supporting evidence spans. ### 3. `pageguide_guide_data` Task stimuli for the **Guide** condition — 7 procedural tasks across 6 platforms (Google Sheets, Google Docs, Google Slides, Coda, TradingView, Scratch), labelled Easy or Medium difficulty. ### 4. `pageguide_hide_data` Task stimuli for the **Hide** condition — 37 annotated webpage snapshots (Amazon, Netflix, TechCrunch, Allrecipes, Spotify, Yelp, and more) with `(user_goal, hide_query, difficulty, hidden_elements)` annotations and ground-truth CSS selectors. --- ## Sample Usage You can load these datasets using the Hugging Face `datasets` library as shown below: ### User Study Logs ```python from datasets import load_dataset tasks = load_dataset("ttn0011/pageguide_userstudy", data_files="tasks.csv", split="train").to_pandas() paired = load_dataset("ttn0011/pageguide_userstudy", data_files="paired_times.csv", split="train").to_pandas() ``` ### Find Task Data ```python from datasets import load_dataset find_tasks = load_dataset("ttn0011/pageguide_find_data", split="train").to_pandas() ``` ### Guide Task Data ```python from datasets import load_dataset guide_tasks = load_dataset("ttn0011/pageguide_guide_data", split="train").to_pandas() ``` ### Hide Task Data ```python from datasets import load_dataset hide_tasks = load_dataset("ttn0011/pageguide_hide_data", split="train").to_pandas() ```