Current applied intelligent systems have crucial shortcomings either in reasoning the gathered knowledge, or representation of comprehensive integrated information. To address these limitations, we develop a formal transition system which is applied to the common artificial intelligence (AI) systems, to reason about the findings. The developed model was created by combining the Public Announcement Logic (PAL) and the Linear Temporal Logic (LTL), which will be done to analyze both single-framed data and the following time-series data. To do this, first, the achieved knowledge by an AI-based system (i.e., classifiers) for an individual time-framed data, will be taken, and then, it would be modeled by a PAL. This leads to developing a unified representation of knowledge, and the smoothness in the integration of the gathered and external experiences. Therefore, the model could receive the classifier's predefined -- or any external -- knowledge, to assemble them in a unified manner. Alongside the PAL, all the timed knowledge changes will be modeled, using a temporal logic transition system. Later, following by the translation of natural language questions into the temporal formulas, the satisfaction leads the model to answer that question. This interpretation integrates the information of the recognized input data, rules, and knowledge. Finally, we suggest a mechanism to reduce the investigated paths for the performance improvements, which results in a partial correction for an object-detection system.
翻译:目前应用的智能系统在推理所收集的知识或全面综合信息的表述方面都存在重大缺陷。为了解决这些局限性,我们开发了一个正式的过渡系统,适用于通用人工智能系统(AI),以说明调查结果。开发的模型是结合公共公告逻辑(PAL)和在线时空逻辑(LTL)建立的,将用来分析单一框架数据和随后的时序数据。为了做到这一点,首先,将采用基于AI的系统(即分类者)获得的关于单个时间框架数据的知识,然后由PAL制模。这导致形成一种统一的知识表述,以及将所收集的知识与外部经验结合起来的顺畅性。因此,模型可以接收分类者预先定义的 -- -- 或任何外部的 -- -- 知识,以统一的方式加以组合。与PAL一样,所有时间框架系统(即分类者)获得的知识变化都将采用模型,采用时间逻辑过渡系统。随后,将自然语言问题转换为时间公式,然后由PAL制成一种满意度,从而形成知识的统一代表了所收集和外部经验的改进模式。我们最后通过一个数据模型来提出对结果的改进。