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Problem Transformation Methods For Prediction of Opinion and Exceptions In Financial Statements Audit Reports: Case For Financial Statements Audit In Central Kalimantan Province

机译:财务报表审计报告中的意见和例外预测的问题转型方法:卡利马坦中部财务报表审计案件

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The previous research related to financial statements audit mostly used single-label classification, such as opinion prediction, opinion identification, and opinion detection. We propose the use of multi-label classification to predict the "opinion and exceptions" using data from financial statements audit reports in Central Kalimantan province. We use financial ratios as attributes as well as opinion and exceptions as labels. In this research, we use three of Problem Transformation Methods, namely Binary Relevance (BR), Classifier Chains (CC) and Random k-labelsets (RAkEL), where each of will be combined with three of base classifiers such as J48, SMO, and Random Forest. The best evaluation metrics results for Hamming Loss is 0.19, for One-Error is 0.253, for Rank Loss is 0.16, and for Average Precision is 0.793.
机译:与财务报表有关的先前研究审核主要使用单一标签分类,例如观点预测,意见鉴定和意见检测。我们建议使用多标签分类,以预测使用卡里曼坦省中部财务报表审计报告的数据的“意见和例外”。我们使用金融比例作为属性以及标签的意见和例外。在本研究中,我们使用三个问题转换方法,即二进制相关性(BR),分类器链(CC)和随机k-Labelsets(Rakel),其中每个将与三个基本分类器(如J48,SMO)组合,和随机的森林。汉明损失的最佳评估度量结果为0.19,对于单个误差为0.253,对于排名损失为0.16,平均精度为0.793。

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