context logic
Scales and Hedges in a Logic with Analogous Semantics
Schmidtke, Hedda R., Coelho, Sara
Logics with analogous semantics, such as Fuzzy Logic, have a number of explanatory and application advantages, the most well-known being the ability to help experts develop control systems. From a cognitive systems perspective, such languages also have the advantage of being grounded in perception. For social decision making in humans, it is vital that logical conclusions about others (cognitive empathy) are grounded in empathic emotion (affective empathy). Classical Fuzzy Logic, however, has several disadvantages: it is not obvious how complex formulae, e.g., the description of events in a text, can be (a) formed, (b) grounded, and (c) used in logical reasoning. The two-layered Context Logic (CL) was designed to address these issue. Formally based on a lattice semantics, like classical Fuzzy Logic, CL also features an analogous semantics for complex fomulae. With the Activation Bit Vector Machine (ABVM), it has a simple and classical logical reasoning mechanism with an inherent imagery process based on the Vector Symbolic Architecture (VSA) model of distributed neuronal processing. This paper adds to the existing theory how scales, as necessary for adjective and verb semantics can be handled by the system.
A Hybrid Natural Language Generation System Integrating Rules and Deep Learning Algorithms
Wei, Wei, Zhou, Bei, Leontidis, Georgios
This section presents the HMCU analysis model that is adopted to compare and evaluate the performance of various Nowadays, mainstream natural language generation NLG model, along with the brief introduction of the essential (NLG) techniques fall into two categories, i.e. conventional concepts regarding rule-based as well as deep learningbased rule-based approaches and deep learning algorithm-based NLG techniques that are conducive to understand our approaches, each of which carries exclusive pros and cons.