# EmoLLM's datasets * Category of dataset: **General** and **Role-play** * Type of data: **QA** and **Conversation** * Summary: General(**6 datasets**), Role-play(**3 datasets**) ## Category * **General**: generic dataset, including psychological Knowledge, counseling technology, etc. * **Role-play**: role-playing dataset, including character-specific conversation style data, etc. ## Type * **QA**: question-and-answer pair * **Conversation**: multi-turn consultation dialogue ## Summary | Category | Dataset | Type | Total | | :---------: | :-------------------: | :----------: | :-----: | | *General* | data | Conversation | 5600+ | | *General* | data_pro | Conversation | 36500+ | | *General* | multi_turn_dataset_1 | Conversation | 36,000+ | | *General* | multi_turn_dataset_2 | Conversation | 27,000+ | | *General* | single_turn_dataset_1 | QA | 14000+ | | *General* | single_turn_dataset_2 | QA | 18300+ | | *Role-play* | aiwei | Conversation | 4000+ | | *Role-play* | SoulStar | QA | 11200+ | | *Role-play* | tiangou | Conversation | 3900+ | | …… | …… | …… | …… | ## Source **General**: * dataset `data` from this repo * dataset `data_pro` from this repo * dataset `multi_turn_dataset_1` from [Smile](https://github.com/qiuhuachuan/smile) * dataset `multi_turn_dataset_2` from [CPsyCounD](https://github.com/CAS-SIAT-XinHai/CPsyCoun) * dataset `single_turn_dataset_1` from this repo * dataset `single_turn_dataset_2` from this repo **Role-play**: * dataset `aiwei` from this repo * dataset `tiangou` from this repo * dataset `SoulStar` from [SoulStar](https://github.com/Nobody-ML/SoulStar) **Dataset Deduplication**: Combine absolute matching with fuzzy matching (Simhash) algorithms to deduplicate the dataset, thereby enhancing the effectiveness of the fine-tuning model. While ensuring the high quality of the dataset, the risk of losing important data due to incorrect matches can be reduced via adjusting the threshold. https://algonotes.readthedocs.io/en/latest/Simhash.html