Achieving Artificial General Intelligence Through Peewee Granularity
نویسندگان
چکیده
The general intelligence of any autonomous system must in large part be measured by its ability to automatically learn new skills and integrate these with prior skills. Cognitive architectures addressing these topics are few and far between – possibly because of their difficulty. We argue that architectures capable of diverse skill acquisition and integration, and real-time management of these, require an approach of modularization that goes well beyond the current practices, leading to a class of architectures we refer to as peewee-granule systems. The building blocks (modules) in such systems have simple operational semantics and result in architectures that are heterogeneous at the cognitive level but homogeneous at the computational level.
منابع مشابه
From Perception to Decision Making by Means of Qualitative Abstraction
Spatial Cognition is an interdisciplinary research area that among other things serves as a testbed for numerous approaches to knowledge representation and for results from artificial intelligence, cognitive psychology, soft computing, geography, biological cybernetics, and robotics. Spatial and temporal granularity are of particular relevance in spatial cognition for at least two different rea...
متن کاملDeep Reinforcement Learning as Foundation for Artificial General Intelligence
Deep machine learning and reinforcement learning are two complementing fields within the study of intelligent systems. When combined, it is argued that they offer a promising path for achieving artificial general intelligence (AGI). This chapter outlines the concepts facilitating such merger of technologies and motivates a framework for building scalable intelligent machines. The prospect of ut...
متن کاملHuman-Level Artificial Intelligence? Be Serious!
68 AI MAGAZINE ■ I claim that achieving real human-level artificial intelligence would necessarily imply that most of the tasks that humans perform for pay could be automated. Rather than work toward this goal of automation by building special-purpose systems, I argue for the development of general-purpose, educable systems that can learn and be taught to perform any of the thousands of jobs th...
متن کاملArtificial Brains
This chapter introduces the idea of " Evolvable Hardware, " which applies evolutionary algorithms to the generation of programmable hardware as a means of achieving Artificial Intelligence. Cellular Automata-based Neural Networks are evolved in different modules, which form the components of artificial brains. Results from past models and plans for future work are presented.
متن کاملARTIFICIAL GENERAL INTELLIGENCE Artificial General Intelligence: Concept, State of the Art, and Future Prospects early preliminary draft, for comment-solicitation only
Since the AI discipline’s founding 6 decades ago, it has yielded many interesting technologies and theoretical results. However it has proved relatively unsuccessful in achieving some of the original core goals of the field, such as the creation of systems with general intelligence as distinct from specialized capabilities and performance on narrowly defined tasks. Subsequently a broad communit...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
دوره شماره
صفحات -
تاریخ انتشار 2008