Auteurs : Hiroyuki Araki http://popups.uliege.be/3041-539x/index.php?id=147 Publications of Auteurs Hiroyuki Araki fr 0 Brain Agent Model using Vector State Machine http://popups.uliege.be/3041-539x/index.php?id=1626 First, we introduce VM(vector state machine) which is generalized from the structured vector addition system, and, next, propose KR/VM model, where KR is the model for knowledge representation, since the conventional AI (Artificial Intelligence) technique is also important. As a result, we obtain a hybrid model of the AI model and the vector state machine, and it will be a good brain agent model which is widely applicable for the practical problems. Mon, 15 Jul 2024 16:04:47 +0200 Mon, 15 Jul 2024 16:04:55 +0200 http://popups.uliege.be/3041-539x/index.php?id=1626 Quantum Functional Devices and Quantum Computing http://popups.uliege.be/3041-539x/index.php?id=1482 We believe the quantum functional device to be a future perspective device, if we solve the problems that it has nowadays. We will summarize such problems with several discussions from the viewpoint of circuit and system. Fri, 12 Jul 2024 15:13:04 +0200 Fri, 12 Jul 2024 15:13:14 +0200 http://popups.uliege.be/3041-539x/index.php?id=1482 Real-Time Processing of Structure and Its Anticipation http://popups.uliege.be/3041-539x/index.php?id=626 A two-level processing scheme for real-time image understanding is proposed, where an example-based (or case-based) reasoning in neural AI systems is introduced. The system has two levels; Component Level and Structure Level. At the component level, an elementary pattern recognition is performed as in the conventional pattern recognition, while the syntax pattern recognition is done at the structure level. Both levels are essentially time-consuming (theoretically, NP-complete each). The pattern recognition assisted by syntax recognition reduces the total complexity of processes, and the system can perform a real-time image understanding, when the VLSI chips are introduced. As a result, we show a reasonable real-time image understanding scheme by introducing neural pattern recognition at the component level and a case-based AI technique at the structure level. Fri, 28 Jun 2024 15:24:01 +0200 Tue, 08 Oct 2024 14:06:02 +0200 http://popups.uliege.be/3041-539x/index.php?id=626 Structured Vector Addition System - A Simulated Brain Model for Creative Activity http://popups.uliege.be/3041-539x/index.php?id=299 In this paper we introduce an extended vector addition system, i.e., a structured vector addition system. The vector addition system (in short, VAS) is proposed by R. Karp et al. as a parallel processing model, but the VAS seems to be far from the neural network. However it is an excellent "macro" model for the brain behavior, especially, for the emotional behavior. The original VAS is weak to represent the control mechanism, and therefore, we propose a structured VAS (in short, SVAS),where the control mechanism plays a role of simulating the dynamical behavior of human emotion, especially, with the state transition of vectors. We will discuss the inductive learning and the anticipation on SVAS. Fri, 21 Jun 2024 09:45:59 +0200 Fri, 21 Jun 2024 09:46:17 +0200 http://popups.uliege.be/3041-539x/index.php?id=299 Automaton-Based Anticipatory System http://popups.uliege.be/3041-539x/index.php?id=141 A lot of research for anticipatory systems have been reported, where the chaotic equation including the hyper incursion equation plays an important role. The neural network model is also included in such a category and will continue to be discussed. From the viewpoint of computer systems, however, we have proposed a hybrid system architecture mixed with neural network and artificial intelligence, where the two-level structure is introduced ; the first layer : a neural network, and the second layer : an automaton system. On the two-layered system, the automaton part is dominant for anticipation, because the state transition is made by an automaton behavior although the selection among transitions is made by a neural network. In this paper, we discuss an automaton-based anticipation, since it is appropriate to discuss anticipation together with learnability. Tue, 18 Jun 2024 16:19:12 +0200 Mon, 07 Oct 2024 12:53:35 +0200 http://popups.uliege.be/3041-539x/index.php?id=141