General AI system solves a wide range of tasks with high performance in an automated fashion. The best general AI algorithm designed by one individual is different from that devised by another. The best performance records achieved by different users are also different. An inevitable component of general AI is tacit knowledge that depends upon user-specific comprehension of task information and individual model design preferences that are related to user technical experiences. Tacit knowledge affects model performance but cannot be automatically optimized in general AI algorithms. In this paper, we propose User-Oriented Smart General AI System under Causal Inference, abbreviated as UOGASuCI, where UOGAS represents User-Oriented General AI System and uCI means under the framework of causal inference. User characteristics that have a significant influence upon tacit knowledge can be extracted from observed model training experiences of many users in external memory modules. Under the framework of causal inference, we manage to identify the optimal value of user characteristics that are connected with the best model performance designed by users. We make suggestions to users about how different user characteristics can improve the best model performance achieved by users. By recommending updating user characteristics associated with individualized tacit knowledge comprehension and technical preferences, UOGAS helps users design models with better performance.
翻译:通用AI系统以自动化方式解决一系列高性能任务。一个人设计的最佳通用AI算法与另一个人设计的方法不同。不同用户取得的最佳性能记录也不同。通用AI的必然组成部分是默认知识,取决于用户对任务信息的具体理解和与用户技术经验相关的个人模型设计偏好。塔西特知识影响模型性能,但不能在通用AI算法中自动优化。在本文中,我们提议在Causal Inference 下采用用户为主的智能通用AI系统,缩写为 UOGASuCI, UOGAS代表用户为用户的通用AI系统,UCI在因果推断框架内代表UCI的手段。用户特征对默认知识有重大影响,可从许多用户在外部记忆模块中观察到的示范培训经验中提取。根据因果关系框架,我们设法确定与用户设计的最佳性能模型性能相联系的用户特征的最佳价值。我们向用户提出建议,说明不同用户的特点如何改进用户实现的最佳模型性能。通过建议与个人性能偏好的用户设计,从而改进用户设计与个人分析和技术偏好的用户的用户。