Biologically inspired intelligent decision making
نویسندگان
چکیده
Artificial neural networks (ANNs) are a class of powerful machine learning models for classification and function approximation which have analogs in nature. An ANN learns to map stimuli to responses through repeated evaluation of exemplars of the mapping. This learning approach results in networks which are recognized for their noise tolerance and ability to generalize meaningful responses for novel stimuli. It is these properties of ANNs which make them appealing for applications to bioinformatics problems where interpretation of data may not always be obvious, and where the domain knowledge required for deductive techniques is incomplete or can cause a combinatorial explosion of rules. In this paper, we provide an introduction to artificial neural network theory and review some interesting recent applications to bioinformatics problems.
منابع مشابه
A Simulated Physiological/Cognitive "Double Agent"
This paper describes the cognitive capabilities of artificial intelligent agents in Maryland Virtual Patient (MVP), an environment that provides interactive, open-ended simulations of virtual patients for the training of medical personnel. The environment is implemented as an agent network that includes one human agent – the user – and a network of artificial agents. Some of the artificial agen...
متن کاملCognitive Process of Moral Decision-Making for Autonomous Agents
There are a great variety of theoretical models of cognition whose main purpose is to explain the inner workings of the human brain. Researchers from areas such as neuroscience, psychology, and physiology have proposed these models. Nevertheless, most of these models are based on empirical studies and on experiments with humans, primates, and rodents. In fields such as cognitive informatics and...
متن کاملAnalog Circuit Design with Fuzzy Inference
Since biologically-inspired intelligent systems with learning and decision-making capabilities vastly act upon comparison among inputs, the ability to select those inputs which satisfy certain conditions is of great significance in realization of such systems. Moreover intelligent systems need to operate with concurrency so as to reflect inherited capability of their biological counterparts lik...
متن کاملHolarchical Systems and Emotional Holons: Biologically-Inspired System Designs for Control of Autonomous Aerial Vehicles
The BEES (Bio-inspired Engineering for Exploration Systems) for Mars project at NASA Ames Research Center has the goal of developing bio-inspired flight control strategies to enable aerial explorers for Mars scientific investigations. This paper presents a summary of our ongoing research into biologically inspired system designs for control of unmanned autonomous aerial vehicle communities for ...
متن کاملA Generalized Quantum-Inspired Decision Making Model for Intelligent Agent
A novel decision making for intelligent agent using quantum-inspired approach is proposed. A formal, generalized solution to the problem is given. Mathematically, the proposed model is capable of modeling higher dimensional decision problems than previous researches. Four experiments are conducted, and both empirical experiments results and proposed model's experiment results are given for each...
متن کامل