The K-nearest Neighbor algorithm does not require a priori knowledge and its forecasting results are better than those of the linear model algorithm. However, its computing speed is low and its parameter adjustment method is not flexible enough. Based on the traditional K-nearest neighbor algorithm, this paper proposes a two-tier K-nearest neighbor algorithm. Combined with the actual traffic flow, it calibrates the algorithm parameter to improve the calculation speed and the accuracy of the algorithm.
Zhiwei XingHe ChuanQian LuoJiang XiangfengChang LiuCong Wan
Yanguang CaiHelie HuangHao CaiYuanhang Qi
Lijin YangQing YangYonghua LiYuqing Feng
Tong ZouYuxi HeNian ZhangRenjie DuXunfei Gao
Shuangshuang LiZhen ShenGang Xiong