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Adaptive Neuro-Fuzzy Inferential Approach for the Diagnosis of Prostate Diseases 自适应神经模糊推理法诊断前列腺疾病
Q3 Computer Science Pub Date : 2022-02-08 DOI: 10.5815/ijisa.2022.01.03
Matthew Cobbinah, U. Abdulrahman, Abaido K Emmanuel
In this study, Adaptive Neuro-fuzzy Inferential System (ANFIS) is adapted for diagnosing prostate diseases. The system involves generating and tuning a fuzzy inference system to handle the imprecise terms used for describing prostate cases and severity. Several diagnostic variables were used to learn the feature statistics present in a typical data, while the trained model was validated and adapted for testing new prostate cases. A total of 335 data from patients’ records were collected at the Medi Moses Prostate Centre, Kumasi Ghana. The dataset was partitioned into 70% which was used for model training, and the other 30% was utilized in the validation phase. The proposed model was implemented in the MATLAB environment. Evaluation result from the proposed system demonstrated that the system achieved an accurate diagnostic result with an RMSE value of 11%. This indicates that the system has a relatively high accuracy and could be accepted for prostate diagnosis. Furthermore, the model was able to learn well and generalize the features in the data set, making the proposed ANFIS model suitable for new cases. Performance analysis showed that the ANFIS is well suited for handling the crispy values used in prostate diagnosis; thus, it can be extensively employed in other similar areas of medical diagnosis.
本研究采用自适应神经模糊推理系统(ANFIS)诊断前列腺疾病。该系统包括生成和调整一个模糊推理系统,以处理用于描述前列腺病例和严重程度的不精确术语。几个诊断变量被用来学习典型数据中存在的特征统计,而训练的模型被验证并适应于测试新的前列腺病例。在加纳库马西的Medi Moses前列腺中心共收集了335份患者记录数据。数据集被分割成70%用于模型训练,另外30%用于验证阶段。该模型在MATLAB环境下实现。评价结果表明,该系统的诊断结果准确,RMSE值为11%。这表明该系统具有较高的准确率,可用于前列腺诊断。此外,该模型能够很好地学习和泛化数据集中的特征,使所提出的ANFIS模型适用于新的情况。性能分析表明,ANFIS非常适合处理前列腺诊断中使用的脆皮值;因此,它可以广泛应用于其他类似的医学诊断领域。
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引用次数: 0
An Intelligent Ensemble Classification Method For Spam Diagnosis in Social Networks 基于智能集成分类的社交网络垃圾邮件诊断方法
Q3 Computer Science Pub Date : 2022-02-08 DOI: 10.5815/ijisa.2022.01.02
Ali Ahraminezhad, Musa Mojarad, Hassan Arfaeinia
In recent years, the destructive behavior of social networks spammers has seriously threatened the information security of ordinary users. To reduce this threat, many researchers have extracted the behavioral characteristics of spam and obtained good results based on machine learning algorithms to identify them. However, most of these studies use a single classification technique that often works differently for different spam data. In this paper, an intelligent ensemble classification method for social networks spam detection is introduced. The proposed heterogeneous ensemble learning framework is based on stack generalization and uses an evolutionary algorithm to improve the modeling process and reduce complexity. In particular, particle swarm optimization has been used as an evolutionary algorithm to optimize model parameters to reduce model complexity. These parameters include a subset of effective features and a subset of the most appropriate single classification techniques. The SPAM E-mail dataset used in this article contains the correct and effective features in spam prediction. Experimental results show that the proposed algorithm effectively improves the detection rate of spam and performs better than the methods used.
近年来,社交网络垃圾邮件制造者的破坏性行为已经严重威胁到普通用户的信息安全。为了减少这种威胁,许多研究人员提取了垃圾邮件的行为特征,并基于机器学习算法对其进行识别,取得了很好的效果。然而,这些研究大多使用单一的分类技术,通常对不同的垃圾邮件数据工作方式不同。本文介绍了一种用于社交网络垃圾邮件检测的智能集成分类方法。提出的异构集成学习框架基于堆栈泛化,并使用进化算法改进建模过程,降低复杂性。其中,粒子群算法作为一种进化算法来优化模型参数以降低模型复杂度。这些参数包括有效特征的子集和最合适的单一分类技术的子集。本文中使用的SPAM E-mail数据集包含了正确有效的垃圾邮件预测功能。实验结果表明,该算法有效地提高了垃圾邮件的检测率,性能优于现有的方法。
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引用次数: 2
Towards an Intelligent Machine Learning-based Business Approach 迈向基于智能机器学习的商业方法
Q3 Computer Science Pub Date : 2022-02-08 DOI: 10.5815/ijisa.2022.01.01
Mohamed Nazih Omri, Wafa Mribah
With the constant increase of data induced by stakeholders throughout a product life cycle, companies tend to rely on project management tools for guidance. Business intelligence approaches that are project-oriented will help the team communicate better, plan their next steps, have an overview of the current project state and take concrete actions prior to the provided forecasts. The spread of agile working mindsets are making these tools even more useful. It sets a basic understanding of how the project should be running so that the implementation is easy to follow on and easy to use. In this paper, we offer a model that makes project management accessible from different software development tools and different data sources. Our model provide project data analysis to improve aspects: (i) collaboration which includes team communication, team dashboard. It also optimizes document sharing, deadlines and status updates. (ii) planning: allows the tasks described by the software to be used and made visible. It will also involve tracking task time to display any barriers to work that some members might be facing without reporting them. (iii) forecasting to predict future results from behavioral data, which will allow concrete measures to be taken. And (iv) Documentation to involve reports that summarize all relevant project information, such as time spent on tasks and charts that study the status of the project. The experimental study carried out on the various data collections on our model and on the main models that we have studied in the literature, as well as the analysis of the results, which we obtained, clearly show the limits of these studied models and confirms the performance of our model as well as efficiency in terms of precision, recall and robustness.
在整个产品生命周期中,随着干系人引发的数据不断增加,企业倾向于依赖项目管理工具进行指导。面向项目的商业智能方法将帮助团队更好地沟通,计划他们的下一步,对当前项目状态进行概述,并在提供预测之前采取具体行动。敏捷工作思维的传播使这些工具变得更加有用。它设置了对项目应该如何运行的基本理解,以便实现易于跟踪和使用。在本文中,我们提供了一个模型,可以从不同的软件开发工具和不同的数据源访问项目管理。我们的模型提供项目数据分析,以改善以下方面:(i)协作,包括团队沟通,团队仪表板。它还优化了文件共享、截止日期和状态更新。(ii)规划:允许使用软件描述的任务并使其可见。它还将包括跟踪任务时间,以显示某些成员可能面临的工作障碍,而不报告这些障碍。(iii)预测:根据行为数据预测未来的结果,以便采取具体措施。文件包括总结所有有关项目信息的报告,例如在任务上花费的时间和研究项目状况的图表。通过对我们的模型的各种数据收集和文献中我们研究的主要模型进行实验研究,并对我们得到的结果进行分析,清楚地显示了这些研究模型的局限性,并证实了我们的模型在精度、召回率和鲁棒性方面的性能和效率。
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引用次数: 3
BERT based Hierarchical Alternating Co-Attention Visual Question Answering using Bottom-Up Features 基于BERT的自底向上特征分层交替共注意视觉问答
Q3 Computer Science Pub Date : 2022-01-01 DOI: 10.17762/ijisae.v10i3s.2427
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引用次数: 0
A Framework for Flood Extent Mapping using CNN Transfer Learning 基于CNN迁移学习的洪水范围映射框架
Q3 Computer Science Pub Date : 2022-01-01 DOI: 10.17762/ijisae.v10i3s.2426
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引用次数: 0
Damage Detection of Carbon Face Sheet Nomex Sandwich Composites with Image Processing Technique 基于图像处理技术的碳面片Nomex夹层复合材料损伤检测
Q3 Computer Science Pub Date : 2021-12-27 DOI: 10.18201/ijisae.2021474023
Ibrahim Demirci
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引用次数: 0
TheRobust EEG Based Emotion Recognition using Deep Neural Network 基于深度神经网络的脑电情绪识别
Q3 Computer Science Pub Date : 2021-12-26 DOI: 10.18201/ijisae.2021473639
Samad Barri Khojasteh
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引用次数: 1
Data Classification of Early-Stage Diabetes Risk Prediction Datasets and Analysis of Algorithm Performance Using Feature Extraction Methods and Machine Learning Techniques 基于特征提取方法和机器学习技术的早期糖尿病风险预测数据集数据分类及算法性能分析
Q3 Computer Science Pub Date : 2021-12-26 DOI: 10.18201/ijisae.2021473767
A. Yaşar
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引用次数: 4
A Novel Hybrid Model For Automated Analysis Of Cardiotocograms Using Machine Learning Algorithms 使用机器学习算法自动分析心电图的新型混合模型
Q3 Computer Science Pub Date : 2021-12-26 DOI: 10.18201/ijisae.2021473716
Emre Avuçlu
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引用次数: 1
Analysis of Intentional Noise Insertion Approach on the Copy-Move Forgery Detection in Digital Image 数字图像复制-移动伪造检测中的故意噪声插入方法分析
Q3 Computer Science Pub Date : 2021-12-26 DOI: 10.18201/ijisae.2021473644
Serkan Ozbay
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引用次数: 0
期刊
International Journal of Intelligent Systems and Applications in Engineering
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