计算机工程与应用
計算機工程與應用
계산궤공정여응용
COMPUTER ENGINEERING AND APPLICATIONS
2013年
18期
265-270
,共6页
粒子群算法%遗传算法%支持向量机%优化%参数%破产预测
粒子群算法%遺傳算法%支持嚮量機%優化%參數%破產預測
입자군산법%유전산법%지지향량궤%우화%삼수%파산예측
Particle Swarm Optimization(PSO)algorithm%Genetic Algorithm(GA)%Support Vector Machine(SVM)%optimi-zation%parameter%bankruptcy prediction
介绍了一种基于粒子群算法和遗传算法优化支持向量机预测破产的方法。这种方法融合了粒子群算法、遗传算法和支持向量机诸多优点,并行地搜寻支持向量机最优的正则化参数和核参数,由此构建优化的预测模型。采用源自UCI机器学习数据库的破产和非破产混合样本数据集,随机地读入数据和进行数据预处理,运用7重交叉校验方法客观地评价预测结果。仿真结果显示,这种方法能自动有效地构建优化的支持向量机,与其他方法比较,具有更强的推广能力和更快的学习速度,而且具有更好的破产预测准确率。
介紹瞭一種基于粒子群算法和遺傳算法優化支持嚮量機預測破產的方法。這種方法融閤瞭粒子群算法、遺傳算法和支持嚮量機諸多優點,併行地搜尋支持嚮量機最優的正則化參數和覈參數,由此構建優化的預測模型。採用源自UCI機器學習數據庫的破產和非破產混閤樣本數據集,隨機地讀入數據和進行數據預處理,運用7重交扠校驗方法客觀地評價預測結果。倣真結果顯示,這種方法能自動有效地構建優化的支持嚮量機,與其他方法比較,具有更彊的推廣能力和更快的學習速度,而且具有更好的破產預測準確率。
개소료일충기우입자군산법화유전산법우화지지향량궤예측파산적방법。저충방법융합료입자군산법、유전산법화지지향량궤제다우점,병행지수심지지향량궤최우적정칙화삼수화핵삼수,유차구건우화적예측모형。채용원자UCI궤기학습수거고적파산화비파산혼합양본수거집,수궤지독입수거화진행수거예처리,운용7중교차교험방법객관지평개예측결과。방진결과현시,저충방법능자동유효지구건우화적지지향량궤,여기타방법비교,구유경강적추엄능력화경쾌적학습속도,이차구유경호적파산예측준학솔。
A method based on Support Vector Machine optimization by Particle Swarm Optimization and Genetic Algorithm is proposed for predicting bankruptcy. The proposed method integrates the merits of Particle Swarm Optimization, Genetic Algo-rithm and Support Vector Machine, which simultaneously searches optimal regularization parameter and kernel parameter of Support Vector Machine for optimal prediction model. A sample dataset comprised of bankruptcy and non-bankruptcy data derived from the UCI machine learning repository is used. The data are randomly read from the dataset and automatically preprocessed by normalization. A 7-fold cross-validation test is used to objectively evaluate the prediction results. The simulation results indicate that the proposed method can automatically and efficiently construct optimal Support Vector Machine. Compared with other methods, the proposed method has better generalization capability, faster learning speed and better bankruptcy prediction accuracy than the other methods.