04721nam 22007095 450 991073601280332120240206170001.097830312680903-031-26809-110.1007/978-3-031-26809-0(MiAaPQ)EBC30670563(Au-PeEL)EBL30670563(DE-He213)978-3-031-26809-0(PPN)272255521(CKB)27899964000041(EXLCZ)992789996400004120230731d2023 u| 0engurcnu||||||||txtrdacontentcrdamediacrrdacarrierSymbols An Evolutionary History from the Stone Age to the Future /by Richard Sproat1st ed. 2023.Cham :Springer Nature Switzerland :Imprint: Springer,2023.1 online resource (240 pages)Print version: Sproat, Richard Symbols Cham : Springer,c2023 9783031268083 1. Introduction -- 2. Semiotics -- 3. Taxonomy -- 4. Writing Systems -- 5. Symbols in the Brain -- 6. The Evolution of Writing -- 7. Simulations -- 8. Misrepresentations -- 9. The Future.For millennia humans have used visible marks to communicate information. Modern examples of conventional graphical symbols include written language, and non-linguistic symbol systems such as mathematical symbology or traffic signs. The latter kinds of symbols convey information without reference to language. This book presents the first systematic study of graphical symbol systems, including a history of graphical symbols from the Paleolithic onwards, a taxonomy of non-linguistic systems – systems that are not tied to spoken language – and a survey of more than 25 such systems. One important feature of many non-linguistic systems is that, as in written language, symbols may be combined into complex “messages” if the information the system represents is itself complex. To illustrate, the author presents an in-depth comparison of two systems that had very similar functions, but very different structure: European heraldry and Japanese kamon. Writing first appeared in Mesopotamia about 5,000 years ago and is believed to have evolved from a previous non-linguistic accounting system. The exact mechanism is unknown, but crucial was the discovery that symbols can represent the sounds of words, not just the meanings. The book presents a novel neurologically-inspired hypothesis that writing evolved in an institutional context in which symbols were “dictated”, thus driving an association between symbol and sound, and provides a computational simulation to support this hypothesis. The author further discusses some common fallacies about writing and non-linguistic systems, and how these relate to widely cited claims about statistical “evidence” for one or another system being writing. The book ends with some thoughts about the future of graphical symbol systems. The intended audience includes students, researchers, lecturers, professionals and scientists from fields like Natural Language Processing, Machine Learning, Archaeology and Semiotics, as well as general readers interested in language and/or writing systems and symbol systems. Richard Sproat is a Research Scientist at Google working on Deep Learning. He has a long-standing interest in writing systems and other graphical symbol systems.Natural language processing (Computer science)Machine learningDigital humanitiesSocial sciencesData processingComputational linguisticsComputer simulationNatural Language Processing (NLP)Machine LearningDigital HumanitiesComputer Application in Social and Behavioral SciencesComputational LinguisticsComputer ModellingNatural language processing (Computer science).Machine learning.Digital humanities.Social sciencesData processing.Computational linguistics.Computer simulation.Natural Language Processing (NLP).Machine Learning.Digital Humanities.Computer Application in Social and Behavioral Sciences.Computational Linguistics.Computer Modelling.302.2223Sproat Richard William1556418MiAaPQMiAaPQMiAaPQBOOK9910736012803321Symbols3883161UNINA