Self-Organizing Neural Networks using the Initial Weight Optimization for High-Throughput Screening Systems for the SICE-ICASE International Joint Conference 2006 (SICE-ICCAS 2006)

During the last several years, the development of combinatorial chemistry has enabled synthesis of a huge amount of chemical compounds in a short time. Therefore HTS (high-throughput screening) is required for dealing with the enormous amount of data. But human intervention (trial & error method...

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Bibliographische Detailangaben
Hauptverfasser: Sookil Kang, Sunwon
Format: Tagungsbericht
Sprache:eng
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Zusammenfassung:During the last several years, the development of combinatorial chemistry has enabled synthesis of a huge amount of chemical compounds in a short time. Therefore HTS (high-throughput screening) is required for dealing with the enormous amount of data. But human intervention (trial & error method) in data mining of experimental results lowers the efficiency of HTS. So self-organizing neural networks that rapidly and accurately transact experimental results are needed for the improvement in HTS performance. The self-organizing algorithms that were previously developed have randomness which causes unrealiability of algorithms which means different trials give quite different performances. However, in the proposed algorithm, randomness of neural networks is effectively eliminated by the construction of the optimized neural networks structure with hidden-neuron and hidden-layer addition. So this algorithm always matches the complexity of the model to that of the problem very well. As a result, this algorithm can find a near-optimal network which is compact and shows good generalization performance without human intervention
DOI:10.1109/SICE.2006.314626