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Yazar "Oezsen, Seral" seçeneğine göre listele

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  • Küçük Resim Yok
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    Effect of feature-type in selecting distance measure for an artificial immune system as a pattern recognizer
    (ACADEMIC PRESS INC ELSEVIER SCIENCE, 2008) Oezsen, Seral; Guenes, Salih
    In designing an artificial immune system (AIS) for a problem domain, one must select a distance measure to find the affinity between system units and input data after determining a representation type. Euclidean distance is a commonly used distance measure in many proposed methods and is selected intuitively or due to simplicity of implementation. But this selection must be done carefully by considering the properties of problem domain. For example, most problems use data vectors with discrete, real-valued and nominal feature values. Whereas Euclidean distance can be used in this kind of problems, some other similarity measures designed for these hybrid vectors would give better results. To call attention of AIS designer to this point, we have tested three distance criteria which are Euclidean distance, Manhattan distance, and hybrid similarity measure on a simple AIS for the classification of two medical dataset taken from the UCI machine learning repository. One of the datasets, Statlog heart disease, contains nominal, discrete and real-valued vectors while the other one, BUPA liver disorders dataset, consists of purely real-valued vectors. For Statlog dataset, the best classification result was obtained with hybrid similarity measure as expected because this dataset consists of three-types of features while results for BUPA dataset were not different so much for the used measures, which is also an expected result considering the nature of this dataset. (C) 2007 Elsevier Inc. All rights reserved.
  • Küçük Resim Yok
    Öğe
    Medical application of information gain based artificial immune recognition system (AIRS): Diagnosis of thyroid disease
    (PERGAMON-ELSEVIER SCIENCE LTD, 2009) Kodaz, Halife; Oezsen, Seral; Arslan, Ahmet; Guenes, Salih
    In this paper, we have made medical application of a new artificial immune system named the information gain based artificial immune recognition system (IG-AIRS) which minimizes the negative effects of taking into account all attributes in calculating Euclidean distance in shape-space representation which is used in many artificial immune systems. For medical data, thyroid disease data set was applied in the performance analysis of our proposed system. Our proposed system reached 95.90% classification accuracy with 10-fold CV method. This result ensured that IG-AIRS would be helpful in diagnosing thyroid function based on laboratory tests, and would open the way to various ill diagnoses support by using the recent clinical examination data, and we are actually in progress. (C) 2008 Elsevier Ltd. All rights reserved.

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