--- license: cc-by-nc-nd-4.0 task_categories: - question-answering language: - en - ko tags: - social-reasoning - dialogue - conversation-analysis size_categories: - n<1K ---

Are they lovers or friends? Evaluating LLMs' Social Reasoning in English and Korean Dialogues

Paper GitHub Hugging Face

**Official dataset for [Are they lovers or friends? Evaluating LLMs' Social Reasoning in English and Korean Dialogues](https://arxiv.org/pdf/2510.19028).** ## Dataset Description SCRIPTS is a bilingual dialogue dataset for evaluating social reasoning capabilities of Large Language Models. The dataset contains dialogues with rich annotations about relationships, social dimensions, and demographic attributes. ### Dataset Splits - **`en`**: 580 English dialogues - **`ko`**: 567 Korean dialogues ### Languages - English - Korean (ν•œκ΅­μ–΄) ## Dataset Structure ### Data Fields Each example contains the following fields: #### Core Fields - `scene_id` (string): Unique identifier for each dialogue - `dialogue` (string): Conversation text with speaker markers `[A]:` and `[B]:` #### Social Relation - `relation_high_probable_gold` (string): Ground truth high-probability social relation - `relation_impossible_gold` (string): Relations annotated as impossible/unlikely - `high_probable_agreement` (string): Inter-annotator agreement level #### Social Dimensions - `intimacy_gold` (string): Intimacy level (intimate, not intimate, neutral, unknown) - `intimacy_agreement` (float): Inter-annotator agreement score - `formality_gold` (string): Formality/task orientation (formal, informal, neutral, unknown) - `formality_agreement` (float): Inter-annotator agreement score - `hierarchy_gold` (string): Power dynamics (equal, hierarchical, unknown) - `hierarchy_agreement` (float): Inter-annotator agreement score #### Demographics - `age-a_gold` (string): Age category for speaker A - `age-b_gold` (string): Age category for speaker B - `age_diff_gold` (string): Age comparison (A>B, A