论文标题
以数据为中心范式的认知计算
Cognitive Computing in Data-centric Paradigm
论文作者
论文摘要
知识是人类最宝贵的资产。人们从通过感受为我们提供现实的数据中提取经验。一般而言,可以看到人类方式与人工系统的方式之间的知识阐述的类比。数字数据是人造系统的“感觉”,它需要发明一种从数据宇宙中提取知识的方法。 认知计算范式意味着系统应该能够从原始数据中提取知识而无需任何人为的算法。范式的第一步是通过发现可重复的数据模式来分析原始数据流。模式之间关系的知识提供了一种观察结构并以综合新语句的目标概括的概念的方法。认知计算范式能够模仿人类概括概念的能力。可以说概括步骤为发现抽象概念,揭示了模式的抽象关系和结构合成的一般规则提供了基础。 如果有人继续结构概括,那么可以构建抽象概念的多层次结构。此外,发现广义类别的概念是迈向人工分析思维范式的第一步。认知计算的最关键可能责任可能是数据分类和识别输入数据流的状态。新陈述的综合为预见了可能的数据状态并通过采用综合并检查假设来阐述有关新数据类别的知识的基础。
Knowledge is the most precious asset of humankind. People extract the experience from the data that provide for us the reality through the feelings. Generally speaking, it is possible to see the analogy of knowledge elaboration between humankind's way and the artificial system's way. Digital data are the "feelings" of an artificial system, and it needs to invent a method of extraction of knowledge from the Universe of data. The cognitive computing paradigm implies that a system should be able to extract the knowledge from raw data without any human-made algorithm. The first step of the paradigm is analysis of raw data streams through the discovery of repeatable patterns of data. The knowledge of relationships among the patterns provides a way to see the structures and to generalize the concepts with the goal to synthesize new statements. The cognitive computing paradigm is capable of mimicking the human's ability to generalize the notions. It is possible to say that the generalization step provides the basis for discovering the abstract notions, revealing the abstract relations of patterns and general rules of structure synthesis. If anyone continues the process of structure generalization, then it is possible to build the multi-level hierarchy of abstract notions. Moreover, discovering the generalized classes of notions is the first step towards a paradigm of artificial analytical thinking. The most critical possible responsibility of cognitive computing could be the classification of data and recognition of input data stream's states. The synthesis of new statements creates the foundation for the foreseeing the possible data states and elaboration of knowledge about new data classes by employing synthesis and checking the hypothesis.