Heart disease is one of the leading causes of death in the world today.Prediction of heart disease is a prominent topic in the clinical data processing.To increase patient survival rates,early diagnosis of heart disea...Heart disease is one of the leading causes of death in the world today.Prediction of heart disease is a prominent topic in the clinical data processing.To increase patient survival rates,early diagnosis of heart disease is an important field of research in the medical field.There are many studies on the prediction of heart disease,but limited work is done on the selection of features.The selection of features is one of the best techniques for the diagnosis of heart diseases.In this research paper,we find optimal features using the brute-force algorithm,and machine learning techniques are used to improve the accuracy of heart disease prediction.For performance evaluation,accuracy,sensitivity,and specificity are used with split and cross-validation techniques.The results of the proposed technique are evaluated in three different heart disease datasets with a different number of records,and the proposed technique is found to have superior performance.The selection of optimized features generated by the brute force algorithm is used as input to machine learning algorithms such as Support Vector Machine(SVM),Random Forest(RF),K Nearest Neighbor(KNN),and Naive Bayes(NB).The proposed technique achieved 97%accuracy with Naive Bayes through split validation and 95%accuracy with Random Forest through cross-validation.Naive Bayes and Random Forest are found to outperform other classification approaches when accurately evaluated.The results of the proposed technique are compared with the results of the existing study,and the results of the proposed technique are found to be better than other state-of-the-artmethods.Therefore,our proposed approach plays an important role in the selection of important features and the automatic detection of heart disease.展开更多
应用MM5(Fifth-Generation NCAR/Penn State Mesoscale Model)-Models-3/CMAQ(Community Multi-Scale Air Quality)空气质量模拟系统对京津冀地区进行了模拟,分别采用Brute Force方法和DDM-3D(Decoupled Direct Method in 3 Dimensions...应用MM5(Fifth-Generation NCAR/Penn State Mesoscale Model)-Models-3/CMAQ(Community Multi-Scale Air Quality)空气质量模拟系统对京津冀地区进行了模拟,分别采用Brute Force方法和DDM-3D(Decoupled Direct Method in 3 Dimensions)技术对两个代表性城市石家庄、北京的PM2.5来源进行了分析计算.结果表明,两种方法的计算结果具有显著相关性,相关系数在0.950~0.989之间;其次,在某一地区浓度贡献较低的情况下,两种方法的计算结果非常接近,但随着浓度贡献的增加,Brute Force方法的计算结果逐渐高于DDM-3D方法,直线拟合的斜率在1.14~2.05之间.以石家庄为例,Brute Force和DDM-3D方法估算的河北南部地区排放的浓度贡献分别为54.7%和64.4%,相差10%左右.浓度贡献空间分布的对比表明,Brute Force方法计算出的浓度影响范围更大,出现某些离散的负值点,或某些负值点与很大的正值点相邻,反映了数值计算带来的计算误差;相比之下,DDM-3D方法的计算结果则更为合理.展开更多
数字航空影像和机载点云之间的配准参数精度会直接影响到配准效果,利用共线方程及影像特征点和点云特征点之间计算相似性测度的方法进行参数优化,有效避免了由于初始参数误差导致的配准偏差。首先,提取航空影像及激光雷达(light detecti...数字航空影像和机载点云之间的配准参数精度会直接影响到配准效果,利用共线方程及影像特征点和点云特征点之间计算相似性测度的方法进行参数优化,有效避免了由于初始参数误差导致的配准偏差。首先,提取航空影像及激光雷达(light detection and ranging,LiDAR)点云的特征点;然后,根据初始配准参数及距离误差计算影像与点云之间的匹配点对;最后,通过强制搜索(brute-force,BF)优化方法来寻找更加精确的匹配参数。此外,还构建了2D-3D对应区域的数据集,用于航空影像和机载LiDAR数据配准的相关研究。展开更多
基金This research was supported by Basic Science Research Program through the National Research Foundation of Korea(NRF)funded by the Ministry of Education(No.2020R1I1A3069700).
文摘Heart disease is one of the leading causes of death in the world today.Prediction of heart disease is a prominent topic in the clinical data processing.To increase patient survival rates,early diagnosis of heart disease is an important field of research in the medical field.There are many studies on the prediction of heart disease,but limited work is done on the selection of features.The selection of features is one of the best techniques for the diagnosis of heart diseases.In this research paper,we find optimal features using the brute-force algorithm,and machine learning techniques are used to improve the accuracy of heart disease prediction.For performance evaluation,accuracy,sensitivity,and specificity are used with split and cross-validation techniques.The results of the proposed technique are evaluated in three different heart disease datasets with a different number of records,and the proposed technique is found to have superior performance.The selection of optimized features generated by the brute force algorithm is used as input to machine learning algorithms such as Support Vector Machine(SVM),Random Forest(RF),K Nearest Neighbor(KNN),and Naive Bayes(NB).The proposed technique achieved 97%accuracy with Naive Bayes through split validation and 95%accuracy with Random Forest through cross-validation.Naive Bayes and Random Forest are found to outperform other classification approaches when accurately evaluated.The results of the proposed technique are compared with the results of the existing study,and the results of the proposed technique are found to be better than other state-of-the-artmethods.Therefore,our proposed approach plays an important role in the selection of important features and the automatic detection of heart disease.
文摘应用MM5(Fifth-Generation NCAR/Penn State Mesoscale Model)-Models-3/CMAQ(Community Multi-Scale Air Quality)空气质量模拟系统对京津冀地区进行了模拟,分别采用Brute Force方法和DDM-3D(Decoupled Direct Method in 3 Dimensions)技术对两个代表性城市石家庄、北京的PM2.5来源进行了分析计算.结果表明,两种方法的计算结果具有显著相关性,相关系数在0.950~0.989之间;其次,在某一地区浓度贡献较低的情况下,两种方法的计算结果非常接近,但随着浓度贡献的增加,Brute Force方法的计算结果逐渐高于DDM-3D方法,直线拟合的斜率在1.14~2.05之间.以石家庄为例,Brute Force和DDM-3D方法估算的河北南部地区排放的浓度贡献分别为54.7%和64.4%,相差10%左右.浓度贡献空间分布的对比表明,Brute Force方法计算出的浓度影响范围更大,出现某些离散的负值点,或某些负值点与很大的正值点相邻,反映了数值计算带来的计算误差;相比之下,DDM-3D方法的计算结果则更为合理.
文摘数字航空影像和机载点云之间的配准参数精度会直接影响到配准效果,利用共线方程及影像特征点和点云特征点之间计算相似性测度的方法进行参数优化,有效避免了由于初始参数误差导致的配准偏差。首先,提取航空影像及激光雷达(light detection and ranging,LiDAR)点云的特征点;然后,根据初始配准参数及距离误差计算影像与点云之间的匹配点对;最后,通过强制搜索(brute-force,BF)优化方法来寻找更加精确的匹配参数。此外,还构建了2D-3D对应区域的数据集,用于航空影像和机载LiDAR数据配准的相关研究。