...
首页> 外文期刊>Natural Computing >Integrative connectionist learning systems inspired by nature: current models, future trends and challenges
【24h】

Integrative connectionist learning systems inspired by nature: current models, future trends and challenges

机译:大自然启发的整合连接主义学习系统:当前模型,未来趋势和挑战

获取原文
获取原文并翻译 | 示例
           

摘要

The so far developed and widely utilized conncctionist systems (artificial neural networks) are mainly based on a single brain-iike connectionist principle of information processing, where learning and information exchange occur in the connections. This paper extends this paradigm of connectionist systems to a new trend-integrative connectionist learning systems (ICOS) that integrate in their structure and learning algorithms principles from different hierarchical levels of information processing in the brain, including neuronal-, genetic-, quantum. Spiking neural networks (SNN) are used as a basic connectionist learning model which is further extended with other information learning principles to create different ICOS. For example, evolving SNN for multitask learning are presented and illustrated on a case study of person authentification based on multimodal auditory and visual information. Integrative gene-SNN are presented, where gene interactions are included in the functioning of a spiking neuron. They are applied on a case study of computational neurogenetic modeling. Integrative quantum-SNN are introduced with a quantum Hebbian learning, where input features as well as information spikes are represented by quantum bits that result in exponentially faster feature selection and model learning. ICOS can be used to solve more efficiently challenging biological and engineering problems when fast adaptive learning systems are needed to incrementally learn in a large dimensional space. They can also help to better understand complex information processes in the brain especially how information processes at different information levels interact. Open questions, challenges and directions for further research are presented.
机译:迄今为止,开发和广泛使用的连接器系统(人工神经网络)主要基于信息处理的单脑-类似连接器原理,其中在连接中进行学习和信息交换。本文将这种连接主义系统范式扩展到新的趋势集成连接主义学习系统(ICOS),该系统将其结构和学习算法的原理集成到大脑中信息处理的不同层次结构中,包括神经元,遗传,量子。尖峰神经网络(SNN)被用作基本的连接主义学习模型,并与其他信息学习原理进一步扩展以创建不同的ICOS。例如,在基于多模式听觉和视觉信息的人员身份验证的案例研究中,提出并说明了用于多任务学习的进化SNN。提出了整合基因-SNN,其中在尖峰神经元的功能中包括基因相互作用。它们被用于计算神经遗传建模的案例研究。集成量子SNN与量子Hebbian学习一起引入,其中输入特征以及信息尖峰由量子位表示,从而导致特征选择和模型学习以指数方式更快地进行。当需要快速的自适应学习系统来在大空间中进行增量学习时,ICOS可用于解决更具挑战性的生物学和工程学问题。它们还可以帮助更好地理解大脑中复杂的信息过程,尤其是不同信息级别的信息过程如何相互作用。提出了进一步研究的开放性问题,挑战和方向。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号