PERBANDINGAN PERFORMA REGRESI LOGISTIK MULTINOMIAL DAN JARINGAN SARAF TIRUAN UMPAN MAJU YANG MENGGUNAKAN ALGORITMA LEVENBERG-MARQUARDT

Performance measures of a model for classification problem in the case of the response variables more than two categories, can be seen from the sensitivity, specificity, and accuracy of classification. Which is considered the best method is a method that gives the smallest classification error. In o...

全面介紹

Saved in:
書目詳細資料
Main Authors: , VEMMIE NASTITI LESTARI, , Prof. Drs. H. Subanar, Ph.D.
格式: Theses and Dissertations NonPeerReviewed
出版: [Yogyakarta] : Universitas Gadjah Mada 2012
主題:
ETD
在線閱讀:https://repository.ugm.ac.id/100983/
http://etd.ugm.ac.id/index.php?mod=penelitian_detail&sub=PenelitianDetail&act=view&typ=html&buku_id=57232
標簽: 添加標簽
沒有標簽, 成為第一個標記此記錄!
實物特徵
總結:Performance measures of a model for classification problem in the case of the response variables more than two categories, can be seen from the sensitivity, specificity, and accuracy of classification. Which is considered the best method is a method that gives the smallest classification error. In other words, has the highest performance measures. In this study, application of the comparative performance of both methods performed on two sets of data, namely data on thyroid disease and simulated data. In the model of feed-forward neural network used backpropagation algorithm based on Levenberg-Marquardt (trainlm). Artificial neural network architecture is optimum in the thyroid data is a model (21-4-3), while the simulation data is a model (2-10-3). The results indicate that the sensitivity, specificity and accuracy of classification using feed-forward neural network has a higher value compared to using multinomial logistic regression. However, to ensure the results of the comparison is true, do resampling 10 times and recorded the results of each performance measure. After resampling, feed-forward neural network capable of delivering higher performance measures than the multinomial logistic regression model, both on the training and testing data.