Using a Constructive Interactive Activation and Competition Neural Network to Construct a Situated Agent's Experience
نویسندگان
چکیده
This paper presents an approach that uses a Constructive Interactive Activation and Competition (CIAC) neural network to model a situated agent’s experience. It demonstrates an implemented situated agent and its learning mechanisms. Experiments add to the understanding of how the agent learns from its interactions with the environment. The agent can develop knowledge structures and their intentional descriptions (conceptual knowledge) specific to what it is confronted with – its experience. This research is presented within the design optimization domain.
منابع مشابه
An Implementation Model of Constructive Memory for a Design Agent
This paper describes a computational model that implements the operations of a constructive memory system for design. The current model is based on a modified Interactive Activation and Competition (IAC) network with learning capabilities incorporated. Implementations and experiments pertaining to the various features of the constructive memory system are also described.
متن کاملImproving the performance of neural network in differentiation of breast tumors using wavelet transformation on dynamic MRI
ABSTRACT Background: A computer aided diagnosis system was established using the wavelet transform and neural network to differentiate malignant from benign in a group of patients with histo-pathologically proved breast lesions based on the data derived independently from time-intensity profile. Materials and Methods: The performance of the artificial neural network (ANN) was evaluated u...
متن کاملNeural Network Modelling of Optimal Robot Movement Using Branch and Bound Tree
In this paper a discrete competitive neural network is introduced to calculate the optimal robot arm movements for processing a considered commitment of tasks, using the branch and bound methodology. A special method based on the branch and bound methodology, modified with a travelling path for adapting in the neural network, is introduced. The main neural network of the system consists of diff...
متن کاملInverse modeling of gravity field data due to finite vertical cylinder using modular neural network and least-squares standard deviation method
In this paper, modular neural network (MNN) inversion has been applied for the parameters approximation of the gravity anomaly causative target. The trained neural network is used for estimating the amplitude coefficient and depths to the top and bottom of a finite vertical cylinder source. The results of the applied neural network method are compared with the results of the least-squares stand...
متن کاملHarmonic Analysis of Neural Networks
It is known that superpositions of ridge functions (single hidden-layer feedforward neural networks) may give good approximations to certain kinds of multivariate functions. It remains unclear, however, how to effectively obtain such approximations. In this paper, we use ideas from harmonic analysis to attack this question. We introduce a special admissibility condition for neural activation fu...
متن کامل