Title of article :
Prediction of area and length complexity measures for binary decision diagrams
Author/Authors :
Beg، نويسنده , , Azam and Chandana Prasad، نويسنده , , P.W.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2010
Abstract :
Measuring the complexity of functions that represent digital circuits in non-uniform computation models is an important area of computer science theory. This paper presents a comprehensive set of machine learnt models for predicting the complexity properties of circuits represented by binary decision diagrams. The models are created using Monte Carlo data for a wide range of circuit inputs and number of minterms. The models predict number of nodes as representations of circuit size/area and path lengths: average path length, longest path length, and shortest path length. The models have been validated using an arbitrarily-chosen subset of ISCAS-85 and MCNC-91 benchmark circuits. The models yield reasonably low RMS errors for predictions, so they can be used to estimate complexity metrics of circuits without having to synthesize them.
Keywords :
Area complexity , Binary decision diagrams , Path length complexity , Machine Learning , neural network modeling , circuit complexity , Complexity prediction
Journal title :
Expert Systems with Applications
Journal title :
Expert Systems with Applications