Abstract | ||
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We present a biology-inspired probabilistic graphical model, called the hypernetwork model, and its application to medical diagnosis of disease. The hypernetwork models are a way of simulated DNA computing. They have a set of hyperedges representing a subset of features in the training data. These characteristics allow the hypernetwork models to work similarly to associative memories and make their learning results more understandable. This comprehensibility is one of main advantages of the models over other machine learning algorithms such as support vector machines and artificial neural networks which are used in a wide range of applications but are not easy to understand their learning results. Since medical applications require both competitive performance and understandability of results, the hypernetwork models are suitable for this kind of applications. However, ordinary hypernetwork models have limitations that hyperedges cannot be changed after they are sampled once. To improve this diversity problem, we adopted simple evolutionary computation method, the hyperedges replacement strategy as the method of keeping the diversity into conventional hypernetworks in addition to error correction for model learning. To show the improvement, we used aptamer-based cardiovascular disease data. Experiment results show that the hypernetworks can achieve fairly competitive performance and the results are also comprehensible. |
Year | DOI | Venue |
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2007 | 10.1145/1274000.1274073 | GECCO (Companion) |
Keywords | Field | DocType |
dna computing,diagnosis,evolutionary computation,support vector machine,evolutionary computing,machine learning,artificial neural network,medical diagnosis,aptamer,error correction | Mathematical optimization,Associative property,Computer science,Hypergraph,Support vector machine,Evolutionary computation,Artificial intelligence,Graphical model,Probabilistic logic,Artificial neural network,Machine learning,DNA computing | Conference |
Citations | PageRank | References |
10 | 0.86 | 5 |
Authors | ||
4 |
Name | Order | Citations | PageRank |
---|---|---|---|
Jung-Woo Ha | 1 | 216 | 25.36 |
Jae-Hong Eom | 2 | 86 | 8.91 |
Sung-Chun Kim | 3 | 90 | 15.60 |
Byoung-Tak Zhang | 4 | 1571 | 158.56 |