--- configs: - config_name: default data_files: - split: AskAcademia path: extracted/pairs/sub-AskAcademia.jsonl - split: AskBaking path: extracted/pairs/sub-AskBaking.jsonl - split: AskCulinary path: extracted/pairs/sub-AskCulinary.jsonl - split: AskDocs path: extracted/pairs/sub-AskDocs.jsonl - split: AskEngineers path: extracted/pairs/sub-AskEngineers.jsonl - split: AskHistorians path: extracted/pairs/sub-AskHistorians.jsonl - split: AskStatistics path: extracted/pairs/sub-AskStatistics.jsonl - split: Coffee path: extracted/pairs/sub-Coffee.jsonl - split: DIY path: extracted/pairs/sub-DIY.jsonl - split: German path: extracted/pairs/sub-German.jsonl - split: JapanTravel path: extracted/pairs/sub-JapanTravel.jsonl - split: LanguageTechnology path: extracted/pairs/sub-LanguageTechnology.jsonl - split: LearnJapanese path: extracted/pairs/sub-LearnJapanese.jsonl - split: Sewing path: extracted/pairs/sub-Sewing.jsonl - split: Shoestring path: extracted/pairs/sub-Shoestring.jsonl - split: askphilosophy path: extracted/pairs/sub-askphilosophy.jsonl - split: askscience path: extracted/pairs/sub-askscience.jsonl - split: bicycling path: extracted/pairs/sub-bicycling.jsonl - split: gardening path: extracted/pairs/sub-gardening.jsonl - split: golang path: extracted/pairs/sub-golang.jsonl - split: homeimprovement path: extracted/pairs/sub-homeimprovement.jsonl - split: houseplants path: extracted/pairs/sub-houseplants.jsonl - split: languagelearning path: extracted/pairs/sub-languagelearning.jsonl - split: learnjavascript path: extracted/pairs/sub-learnjavascript.jsonl - split: learnpython path: extracted/pairs/sub-learnpython.jsonl - split: rust path: extracted/pairs/sub-rust.jsonl - split: solotravel path: extracted/pairs/sub-solotravel.jsonl - split: tea path: extracted/pairs/sub-tea.jsonl - split: woodworking path: extracted/pairs/sub-woodworking.jsonl --- # personalization-reddit Per-subreddit `(query, preferred_answer)` pairs mined from Reddit using an **OP-thanks-reply** heuristic: when the original poster (OP) replies to a comment with thanks/gratitude, that parent comment is treated as their preferred answer to their own question. ## Source Raw post + comment dumps from the [arctic_shift](https://github.com/ArthurHeitmann/arctic_shift) Pushshift mirror, fetched per-subreddit (entire history through the fetch date) and extracted with the pipeline in `may_15/reddit_pipeline/` of the `personalization` repo. Raw NDJSON dumps are kept locally and are not redistributed here. ## Splits One split per subreddit; pick from the dropdown in the data viewer or load programmatically: ```python from datasets import load_dataset ds = load_dataset("dipikakhullar/personalization-reddit", split="AskHistorians") ``` ## Files ``` extracted/ pairs/sub-.jsonl # one (query, preferred_answer) per line stats/sub-.json # funnel counts per subreddit ``` ## Record schema (`pairs/sub-*.jsonl`) | field | type | description | |---|---|---| | `user_id` | str | anonymized OP id (HMAC of Reddit username, see `anon.py`) | | `timestamp` | str | post creation, ISO 8601 UTC | | `subreddit` | str | source subreddit name | | `query` | str | post title, with selftext appended if present | | `preferred_answer` | str | body of the comment OP thanked (via parent of the thanks reply) | | `top_comment` | str \| null | body of the highest-scoring non-OP comment (may equal preferred) | | `op_metadata` | object | OP user fields captured at post time; see below | | `answerer_metadata` | object | answerer user fields captured at comment time; see below | | `metadata` | object | see below | `op_metadata` sub-object (mirrors the multiturn dataset): | field | type | description | |---|---|---| | `user_id` | str | same as top-level `user_id` | | `author_flair_text` | str \| null | OP's flair text at post time | | `author_flair_css_class` | str \| null | flair css class | | `author_flair_type` | str \| null | e.g. "text", "richtext" | | `author_flair_background_color` | str \| null | hex color | | `author_flair_text_color` | str \| null | "light" / "dark" | `answerer_metadata` sub-object: | field | type | description | |---|---|---| | `user_id` | str | same as `metadata.answerer_anon_id` | | `author_flair_text` | str \| null | answerer's flair text at comment time | | `author_flair_css_class` | str \| null | flair css class | `metadata` sub-object: | field | type | description | |---|---|---| | `post_id` | str | Reddit submission id | | `post_score` | int | submission score at fetch time | | `answer_comment_id` | str | comment id of the preferred answer | | `answer_score` | int | preferred-answer score at fetch time | | `answerer_anon_id` | str | anonymized author id of the preferred answer | | `top_comment_id` | str \| null | comment id of the top-scoring non-OP comment | | `top_comment_score` | int \| null | top comment score | | `top_comment_anon_id` | str \| null | anonymized top-comment author id | | `top_equals_preferred` | bool | whether the preferred answer is also the top comment | | `thanks_reply_id` | str | OP's thanks-reply comment id (the signal that triggered the pair) | | `thanks_reply_score` | int | score of OP's thanks reply | | `thanks_reply_text` | str | body of OP's thanks reply | | `thanks_reply_timestamp` | str | thanks reply creation, ISO 8601 UTC | ## Heuristic — OP thanks-reply For each post that passes a question filter: 1. Find comments whose author == OP and whose body matches a "thanks" pattern (see `signals.py::is_thanks_reply`). 2. The parent of each such reply is recorded as a candidate "preferred answer". 3. Materialize each candidate into a pair, joining post metadata + answer body + thanks-reply context. Bots and deleted/removed authors are filtered out before pair emission (`signals.py`, `subreddits.py::BOT_AUTHORS`). ## Anonymization Reddit usernames are hashed via HMAC-SHA256 with a per-run secret salt (`anon.py::anon_user_id`) before being written. Post/comment ids and text bodies are kept verbatim — content from public Reddit threads can still be re-identified by searching the post id or quoting the body. ## Subreddits included in this snapshot See `extracted/stats/` for the list and per-sub funnel counts (`rs_records_scanned`, `keep_posts`, `thanks_refs`, `pairs_emitted`, etc.).