insuranceqa-corpus-zh
Insurance dataset
An insurance industry conversation corpus with pre-processed data for natural language processing and question answering tasks.
保险行业语料库,聊天机器人
1k stars
55 watching
345 forks
Language: Python
last commit: over 1 year ago
Linked from 1 awesome list
chatbotcorpusdatasetinsuranceinsuranceqa-corpus-zhmachine-learningnatural-language-processingnatural-language-understandingqasystemquestion-answering
Related projects:
| Repository | Description | Stars |
|---|---|---|
| | A collection of question-answer pairs extracted from online Chinese forums. | 236 |
| | A collection of datasets used to train and improve chatbot systems in both English and Chinese. | 2,033 |
| | Develops a large language model capable of handling complex medical conversations with high accuracy and professionalism. | 324 |
| | A collection of data to train chatbots on COVID-19-related questions | 11 |
| | A large dataset of news articles with labeled categories to train fake news recognition algorithms | 385 |
| | A collection of preprocessed Chinese conversation corpora for use in natural language processing tasks. | 1,089 |
| | An AI-powered chatbot providing personalized mental health support through language generation and adaptive communication | 114 |
| | Develops and deploys conversational AI models for health-related applications by leveraging large-scale datasets and collaborative research | 752 |
| | Pre-trained chatbot models for Chinese open-domain dialogue systems | 306 |
| | A chatbot for openHAB using machine-learning natural language processing | 15 |
| | A large-scale Chinese conversation dataset and pre-trained dialog models for text generation | 1,799 |
| | A large-scale Chinese corpus for pre-training language models. | 927 |
| | Develops a conversational AI model to support mental health discussions in Chinese | 384 |
| | Develops a conversational AI model to support children's emotional well-being | 183 |
| | A conversational language model developed to improve understanding of complex instructions and Chinese vocabulary. | 62 |