A Metamodel and Framework for Artificial General Intelligence From
Theory to Practice
- URL: http://arxiv.org/abs/2102.06112v1
- Date: Thu, 11 Feb 2021 16:45:58 GMT
- Title: A Metamodel and Framework for Artificial General Intelligence From
Theory to Practice
- Authors: Hugo Latapie, Ozkan Kilic, Gaowen Liu, Yan Yan, Ramana Kompella, Pei
Wang, Kristinn R. Thorisson, Adam Lawrence, Yuhong Sun, Jayanth Srinivasa
- Abstract summary: This paper introduces a new metamodel-based knowledge representation that significantly improves autonomous learning and adaptation.
We have applied the metamodel to problems ranging from time series analysis, computer vision, and natural language understanding.
One surprising consequence of the metamodel is that it not only enables a new level of autonomous learning and optimal functioning for machine intelligences.
- Score: 11.756425327193426
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This paper introduces a new metamodel-based knowledge representation that
significantly improves autonomous learning and adaptation. While interest in
hybrid machine learning / symbolic AI systems leveraging, for example,
reasoning and knowledge graphs, is gaining popularity, we find there remains a
need for both a clear definition of knowledge and a metamodel to guide the
creation and manipulation of knowledge. Some of the benefits of the metamodel
we introduce in this paper include a solution to the symbol grounding problem,
cumulative learning, and federated learning. We have applied the metamodel to
problems ranging from time series analysis, computer vision, and natural
language understanding and have found that the metamodel enables a wide variety
of learning mechanisms ranging from machine learning, to graph network analysis
and learning by reasoning engines to interoperate in a highly synergistic way.
Our metamodel-based projects have consistently exhibited unprecedented
accuracy, performance, and ability to generalize. This paper is inspired by the
state-of-the-art approaches to AGI, recent AGI-aspiring work, the granular
computing community, as well as Alfred Korzybski's general semantics. One
surprising consequence of the metamodel is that it not only enables a new level
of autonomous learning and optimal functioning for machine intelligences, but
may also shed light on a path to better understanding how to improve human
cognition.
Related papers
- Meta-Learned Models of Cognition [11.488249464936422]
Meta-learning is a framework for learning algorithms through repeated interactions with an environment.
This article aims to establish a coherent research program around meta-learned models of cognition.
arXiv Detail & Related papers (2023-04-12T16:30:51Z) - Learning with Limited Samples -- Meta-Learning and Applications to
Communication Systems [46.760568562468606]
Few-shot meta-learning optimize learning algorithms that can efficiently adapt to new tasks quickly.
This review monograph provides an introduction to meta-learning by covering principles, algorithms, theory, and engineering applications.
arXiv Detail & Related papers (2022-10-03T17:15:36Z) - Anti-Retroactive Interference for Lifelong Learning [65.50683752919089]
We design a paradigm for lifelong learning based on meta-learning and associative mechanism of the brain.
It tackles the problem from two aspects: extracting knowledge and memorizing knowledge.
It is theoretically analyzed that the proposed learning paradigm can make the models of different tasks converge to the same optimum.
arXiv Detail & Related papers (2022-08-27T09:27:36Z) - Online Structured Meta-learning [137.48138166279313]
Current online meta-learning algorithms are limited to learn a globally-shared meta-learner.
We propose an online structured meta-learning (OSML) framework to overcome this limitation.
Experiments on three datasets demonstrate the effectiveness and interpretability of our proposed framework.
arXiv Detail & Related papers (2020-10-22T09:10:31Z) - A Metamodel and Framework for AGI [3.198144010381572]
We introduce the Deep Fusion Reasoning Engine (DFRE), which implements a knowledge-preserving metamodel and framework for constructing applied AGI systems.
DFRE exhibits some important fundamental knowledge properties such as clear distinctions between symmetric and antisymmetric relations.
Our experiments show that the proposed framework achieves 94% accuracy on average on unsupervised object detection and recognition.
arXiv Detail & Related papers (2020-08-28T23:34:21Z) - A Comprehensive Overview and Survey of Recent Advances in Meta-Learning [0.0]
Meta-learning also known as learning-to-learn which seeks rapid and accurate model adaptation to unseen tasks.
We briefly introduce meta-learning methodologies in the following categories: black-box meta-learning, metric-based meta-learning, layered meta-learning and Bayesian meta-learning framework.
arXiv Detail & Related papers (2020-04-17T03:11:08Z) - Towards explainable meta-learning [5.802346990263708]
Meta-learning aims at discovering how different machine learning algorithms perform on a wide range of predictive tasks.
State of the art approaches are focused on searching for the best meta-model but do not explain how these different aspects contribute to its performance.
We propose techniques developed for eXplainable Artificial Intelligence (XAI) to examine and extract knowledge from black-box surrogate models.
arXiv Detail & Related papers (2020-02-11T09:42:29Z) - Revisiting Meta-Learning as Supervised Learning [69.2067288158133]
We aim to provide a principled, unifying framework by revisiting and strengthening the connection between meta-learning and traditional supervised learning.
By treating pairs of task-specific data sets and target models as (feature, label) samples, we can reduce many meta-learning algorithms to instances of supervised learning.
This view not only unifies meta-learning into an intuitive and practical framework but also allows us to transfer insights from supervised learning directly to improve meta-learning.
arXiv Detail & Related papers (2020-02-03T06:13:01Z) - Explainable Active Learning (XAL): An Empirical Study of How Local
Explanations Impact Annotator Experience [76.9910678786031]
We propose a novel paradigm of explainable active learning (XAL), by introducing techniques from the recently surging field of explainable AI (XAI) into an Active Learning setting.
Our study shows benefits of AI explanation as interfaces for machine teaching--supporting trust calibration and enabling rich forms of teaching feedback, and potential drawbacks--anchoring effect with the model judgment and cognitive workload.
arXiv Detail & Related papers (2020-01-24T22:52:18Z) - Automated Relational Meta-learning [95.02216511235191]
We propose an automated relational meta-learning framework that automatically extracts the cross-task relations and constructs the meta-knowledge graph.
We conduct extensive experiments on 2D toy regression and few-shot image classification and the results demonstrate the superiority of ARML over state-of-the-art baselines.
arXiv Detail & Related papers (2020-01-03T07:02:25Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.