262 research outputs found
OpenCog Hyperon: A Framework for AGI at the Human Level and Beyond
An introduction to the OpenCog Hyperon framework for Artificiai General
Intelligence is presented. Hyperon is a new, mostly from-the-ground-up
rewrite/redesign of the OpenCog AGI framework, based on similar conceptual and
cognitive principles to the previous OpenCog version, but incorporating a
variety of new ideas at the mathematical, software architecture and
AI-algorithm level. This review lightly summarizes: 1) some of the history
behind OpenCog and Hyperon, 2) the core structures and processes underlying
Hyperon as a software system, 3) the integration of this software system with
the SingularityNET ecosystem's decentralized infrastructure, 4) the cognitive
model(s) being experimentally pursued within Hyperon on the hopeful path to
advanced AGI, 5) the prospects seen for advanced aspects like reflective
self-modification and self-improvement of the codebase, 6) the tentative
development roadmap and various challenges expected to be faced, 7) the
thinking of the Hyperon team regarding how to guide this sort of work in a
beneficial direction ... and gives links and references for readers who wish to
delve further into any of these aspects
LIPIcs, Volume 244, ESA 2022, Complete Volume
LIPIcs, Volume 244, ESA 2022, Complete Volum
A Review of Findings from Neuroscience and Cognitive Psychology as Possible Inspiration for the Path to Artificial General Intelligence
This review aims to contribute to the quest for artificial general
intelligence by examining neuroscience and cognitive psychology methods for
potential inspiration. Despite the impressive advancements achieved by deep
learning models in various domains, they still have shortcomings in abstract
reasoning and causal understanding. Such capabilities should be ultimately
integrated into artificial intelligence systems in order to surpass data-driven
limitations and support decision making in a way more similar to human
intelligence. This work is a vertical review that attempts a wide-ranging
exploration of brain function, spanning from lower-level biological neurons,
spiking neural networks, and neuronal ensembles to higher-level concepts such
as brain anatomy, vector symbolic architectures, cognitive and categorization
models, and cognitive architectures. The hope is that these concepts may offer
insights for solutions in artificial general intelligence.Comment: 143 pages, 49 figures, 244 reference
The Sixth Annual Workshop on Space Operations Applications and Research (SOAR 1992)
This document contains papers presented at the Space Operations, Applications, and Research Symposium (SOAR) hosted by the U.S. Air Force (USAF) on 4-6 Aug. 1992 and held at the JSC Gilruth Recreation Center. The symposium was cosponsored by the Air Force Material Command and by NASA/JSC. Key technical areas covered during the symposium were robotic and telepresence, automation and intelligent systems, human factors, life sciences, and space maintenance and servicing. The SOAR differed from most other conferences in that it was concerned with Government-sponsored research and development relevant to aerospace operations. The symposium's proceedings include papers covering various disciplines presented by experts from NASA, the USAF, universities, and industry
Deep learning applied to computational mechanics: A comprehensive review, state of the art, and the classics
Three recent breakthroughs due to AI in arts and science serve as motivation:
An award winning digital image, protein folding, fast matrix multiplication.
Many recent developments in artificial neural networks, particularly deep
learning (DL), applied and relevant to computational mechanics (solid, fluids,
finite-element technology) are reviewed in detail. Both hybrid and pure machine
learning (ML) methods are discussed. Hybrid methods combine traditional PDE
discretizations with ML methods either (1) to help model complex nonlinear
constitutive relations, (2) to nonlinearly reduce the model order for efficient
simulation (turbulence), or (3) to accelerate the simulation by predicting
certain components in the traditional integration methods. Here, methods (1)
and (2) relied on Long-Short-Term Memory (LSTM) architecture, with method (3)
relying on convolutional neural networks. Pure ML methods to solve (nonlinear)
PDEs are represented by Physics-Informed Neural network (PINN) methods, which
could be combined with attention mechanism to address discontinuous solutions.
Both LSTM and attention architectures, together with modern and generalized
classic optimizers to include stochasticity for DL networks, are extensively
reviewed. Kernel machines, including Gaussian processes, are provided to
sufficient depth for more advanced works such as shallow networks with infinite
width. Not only addressing experts, readers are assumed familiar with
computational mechanics, but not with DL, whose concepts and applications are
built up from the basics, aiming at bringing first-time learners quickly to the
forefront of research. History and limitations of AI are recounted and
discussed, with particular attention at pointing out misstatements or
misconceptions of the classics, even in well-known references. Positioning and
pointing control of a large-deformable beam is given as an example.Comment: 275 pages, 158 figures. Appeared online on 2023.03.01 at
CMES-Computer Modeling in Engineering & Science
Q(sqrt(-3))-Integral Points on a Mordell Curve
We use an extension of quadratic Chabauty to number fields,recently developed by the author with Balakrishnan, Besser and M ̈uller,combined with a sieving technique, to determine the integral points overQ(√−3) on the Mordell curve y2 = x3 − 4
Machine Learning
Machine Learning can be defined in various ways related to a scientific domain concerned with the design and development of theoretical and implementation tools that allow building systems with some Human Like intelligent behavior. Machine learning addresses more specifically the ability to improve automatically through experience
Knowledge Expansion of a Statistical Machine Translation System using Morphological Resources
Translation capability of a Phrase-Based Statistical Machine Translation (PBSMT) system mostly depends on parallel data and phrases that are not present in the training data are not correctly translated. This paper describes a method that efficiently expands the existing knowledge of a PBSMT system without adding more parallel data but using external morphological resources. A set of new phrase associations is added to translation and reordering models; each of them corresponds to a morphological variation of the source/target/both phrases of an existing association. New associations are generated using a string similarity score based on morphosyntactic information. We tested our approach on En-Fr and Fr-En translations and results showed improvements of the performance in terms of automatic scores (BLEU and Meteor) and reduction of out-of-vocabulary (OOV) words. We believe that our knowledge expansion framework is generic and could be used to add different types of information to the model.JRC.G.2-Global security and crisis managemen
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