Solving Complexity Dataset in e-Ticketing using Machine Learning to Determine Optimum Feature

IF 0.8 Q3 MULTIDISCIPLINARY SCIENCES
Siti Zulaikha Mohd Jamaludin, Majid Khan Majahar Ali, Eric Shiung Wong Vun, Mohd. Tahir Ismail, Noor Farizah Ibrahim
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引用次数: 0

Abstract

e-ticketing is one of the common applications used in technical support in Information Technology (IT) and has been used worldwide in any field of company. The benefits of e-ticketing can reduce the human efforts, increase the sufficiency of system and provides the benefits and efficiency to the customers. Also, e-ticketing ticketing system can enhance worker safety, improving productivity, increasing project efficiency and cause the good impact on the performance of the business in terms of profitability. The main objective of this study is defining the model performance in each important feature by analysing the complex dataset by using logistic regression as a Machine Learning (ML) algorithm. In evaluation the performance of classifier, the dataset is injected to Python programming and split into 90% as training set and 10% for the testing set. From the analysis, the study found that only 3 out of 11 independent features in dataset that are relevant chosen to proceed the ML analysis. From the result, the accuracy for sct_short_description, sct_cmdb_ci, and sct_assignment_group is 41.65%, 48.77% and 96.49%, respectively. It showed that the accuracy’s result for the sct_assignment_group resulted that the model is very good accuracy and indicate that the model is well performing. Meanwhile, the value of F1-score is 96.11% in each feature. This result indicates that the model has a good balance of precision and recall in its binary classification predictions. Hence, the study considers the sct_assignment_group as a best features to proceed the analysis. The future study will consider dealing the combination of complexity features by implementing more analysis on ML such as Support Vector Machines and Naïve Bayes.
利用机器学习确定最佳特征,解决电子票务中的复杂数据集问题
电子票务是信息技术(IT)技术支持中常用的应用之一,已在世界范围内的各个领域得到广泛应用。电子票务的优势在于减少人力劳动,提高系统的充分性,为客户提供效益和效率。此外,电子票务系统可以提高工人的安全,提高生产力,提高项目效率,并在盈利方面对企业的绩效产生良好的影响。本研究的主要目标是通过使用逻辑回归作为机器学习(ML)算法分析复杂数据集来定义每个重要特征的模型性能。在评估分类器性能时,将数据集注入Python编程,并将其分成90%作为训练集,10%作为测试集。从分析中,研究发现数据集中11个相关的独立特征中只有3个被选择进行ML分析。从结果来看,sct_short_description、sct_cmdb_ci和sct_assignment_group的准确率分别为41.65%、48.77%和96.49%。结果表明,sct_assignment_group的精度结果表明该模型具有很好的精度,表明该模型具有良好的性能。同时,各特征的F1-score值为96.11%。结果表明,该模型在二元分类预测中具有较好的准确率和召回率平衡。因此,本研究认为sct_assignment_group是进行分析的最佳特征。未来的研究将考虑通过对ML(如支持向量机和Naïve贝叶斯)进行更多分析来处理复杂性特征的组合。
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来源期刊
CiteScore
1.40
自引率
0.00%
发文量
45
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