Spurred by a huge interest in the post-Shannon communication, it has recently been shown that leveraging semantics can significantly improve the communication effectiveness across many tasks. In this article, inspired by human communication, we propose a novel stochastic model of System 1 semantics-native communication (SNC) for generic tasks, where a speaker has an intention of referring to an entity, extracts the semantics, and communicates its symbolic representation to a target listener. To further reach its full potential, we additionally infuse contextual reasoning into SNC such that the speaker locally and iteratively self-communicates with a virtual agent built on the physical listener's unique way of coding its semantics, i.e., communication context. The resultant System 2 SNC allows the speaker to extract the most effective semantics for its listener. Leveraging the proposed stochastic model, we show that the reliability of System 2 SNC increases with the number of meaningful concepts, and derive the expected semantic representation (SR) bit length which quantifies the extracted effective semantics. It is also shown that System 2 SNC significantly reduces the SR length without compromising communication reliability.
翻译:由于对后沙农通信的极大兴趣,最近已经表明,利用语义学可以大大提高许多任务之间的通信效力。在本篇文章中,在人文通信的启发下,我们提出了一种用于通用任务的系统1语义-民族通信(SNC)的新颖的随机模型,在这种模型中,发言者有意提及一个实体,提取语义学,并将其象征性的表示方式传达给目标听众。为了进一步充分发挥其潜力,我们进一步向SNC灌输了背景推理,例如,在物理听众的独有方式下,用虚拟代理器在本地和迭代间自我通信显著提高许多任务之间的通信效力。结果系统2 SNC允许发言者为其听众提取最有效的语义学。我们利用拟议的语义模型,我们表明SNC的可靠性随着有意义的概念的增多而增加,并得出预期的语义学表达方式(SR)微长,从而在物理听众的语义学、即通信环境上进行编码。还表明,SNCSNC系统大大降低了其可靠性。