Mining Interesting Patterns from Hardware-Software Codesign Data with the Learning Classifier System XCS
نویسندگان
چکیده
Embedded Systems are composed of both dedicated elements (hardware components) and programmable units (software components), which have to interact with each other for accomplishing a specific task. One of the aims of Hardware-Software Codesign is the choice of a partitioning between elements that will be implemented in hardware and elements that will be implemented in software is one of the important step in design. In this paper, we present an application of the learning classifier system XCS to the analysis of data derived from Hardware-Software Codesign applications. The goal of the analysis is the discoverying or explicitation of existing interelationships among system components, which can be used to support the human design of embedded systems. The proposed approach is validated on a specific task involving a Digital Sound Spatializer.
منابع مشابه
System Level Hardware-Software Design Exploration with XCS
The current trend in Embedded Systems (ES) design is moving towards the integration of increasingly complex applications on a single chip. An Embedded System has to satisfy both performance constraints and cost limits; it is composed of both dedicated elements, i.e. hardware (HW) components, and programmable units, i.e. software (SW) components, Hardware (HW) and software (SW) components have t...
متن کاملOn Simplifying the Payoff Prediction in Accuracy-based Learning Classifier System
Learning Classifier Systems have recently been successfully applied to a number of data mining problems. Most of this work has used the accuracy-based XCS, in which rule fitness is based on a rule's ability to predict the expected payoff from its use. We are interested in using XCS under an interactive data mining scenario where the speed of learning is important. Previously, we have presented ...
متن کاملEvolutionary Online Data Mining: An Investigation in a Dynamic Environment
Recently, traditional data mining algorithms are challenged by two problems: streaming data, and changes in the hidden context. These challenges emerged from real-world applications such as network intrusion detection, credit card fraud detection, etc. Online or incremental learning becomes more important than ever for dealing with these problems. This chapter investigates XCS, an evolutionary ...
متن کاملApplying the XCS Learning Classifier System to continuous-valued data-mining problems
This thesis represents an in depth investigation into the issues raised by the iterative nature of the data-mining process and, in particular, the use of the XCS Learning Classifier System with continuousvalued data-mining problems. The XCS Learning Classifier System has been shown to have the capability for data-mining through rule induction, that is, a technique by which various characteristi...
متن کاملThe Introduction of a Heuristic Mutation Operator to Strengthen the Discovery Component of XCS
The extended classifier systems (XCS) by producing a set of rules is (classifier) trying to solve learning problems as online. XCS is a rather complex combination of genetic algorithm and reinforcement learning that using genetic algorithm tries to discover the encouraging rules and value them by reinforcement learning. Among the important factors in the performance of XCS is the possibility to...
متن کامل