Feifeng Zheng
Donghua University
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Publication
Featured researches published by Feifeng Zheng.
Applied Mathematics and Computation | 2011
Wei-Chiang Hong; Yucheng Dong; Feifeng Zheng; Shih Yung Wei
Abstract Accurate urban traffic flow forecasting is critical to intelligent transportation system developments and implementations, thus, it has been one of the most important issues in the research on road traffic congestion. Due to complex nonlinear data pattern of the urban traffic flow, there are many kinds of traffic flow forecasting techniques in literature, thus, it is difficult to make a general conclusion which forecasting technique is superior to others. Recently, the support vector regression model (SVR) has been widely used to solve nonlinear regression and time series problems. This investigation presents a SVR traffic flow forecasting model which employs the hybrid genetic algorithm-simulated annealing algorithm (GA-SA) to determine its suitable parameter combination. Additionally, a numerical example of traffic flow data from northern Taiwan is used to elucidate the forecasting performance of the proposed SVRGA-SA model. The forecasting results indicate that the proposed model yields more accurate forecasting results than the seasonal autoregressive integrated moving average (SARIMA), back-propagation neural network (BPNN), Holt–Winters (HW) and seasonal Holt–Winters (SHW) models. Therefore, the SVRGA-SA model is a promising alternative for forecasting traffic flow.
computing and combinatorics conference | 2006
Feifeng Zheng; Stanley P. Y. Fung; Wun-Tat Chan; Francis Y. L. Chin; Chung Keung Poon; Prudence W. H. Wong
We study an on-line broadcast scheduling problem in which requests have deadlines, and the objective is to maximize the weighted throughput, i.e., the weighted total length of the satisfied requests. For the case where all requested pages have the same length, we present an online deterministic algorithm named BAR and prove that it is 4.56-competitive. This improves the previous algorithm of Kim and Chwa [11] which is shown to be 5-competitive by Chan et al. [4]. In the case that pages may have different lengths, we prove a lower bound of Ω(Δ/logΔ) on the competitive ratio where Δ is the ratio of maximum to minimum page lengths. This improves upon the previous
Theoretical Computer Science | 2011
Yinfeng Xu; Wenming Zhang; Feifeng Zheng
\sqrt{\Delta}
Journal of Combinatorial Optimization | 2012
Wenming Zhang; Yinfeng Xu; Feifeng Zheng; Yucheng Dong
lower bound in [11,4] and is much closer to the current upper bound of (
Journal of Combinatorial Optimization | 2006
Feifeng Zheng; Yinfeng Xu; E. Zhang
\Delta+2\sqrt{\Delta}+2
Information Processing Letters | 2008
Feifeng Zheng; Yinfeng Xu; E. Zhang
) in [7]. Furthermore, for small values of Δ we give better lower bounds.
workshop on approximation and online algorithms | 2009
Stanley P. Y. Fung; Chung Keung Poon; Feifeng Zheng
In the problem of online time series search introduced by El-Yaniv et al. (2001) [1], a player observes prices one by one over time and shall select exactly one of the prices on its arrival without the knowledge of future prices, aiming to maximize the selected price. In this paper, we extend the problem by introducing profit function. Considering two cases where the search duration is either known or unknown beforehand, we propose two optimal deterministic algorithms respectively. The models and results in this paper generalize those of El-Yaniv et al. (2001) [1].
International Journal of Production Research | 2016
Xin Feng; Feifeng Zheng; Yinfeng Xu
The basic models of online time series search and one-way trading are introduced by El-Yaniv et al. in Algorithmica 30(1), 101–139 (2001) where it is assumed that the prices are bounded within interval [m,M] (0<m<M). In this paper, we consider another case where every two consecutive prices are interrelated, that is, the variation range of each price depends on its preceding price. We present optimal deterministic online algorithms for the two problems, respectively. According to one conclusion in Algorithmica 30(1), 101–139 (2001), we further point out that for the case we considered, an optimal deterministic algorithm for the one-way trading problem can be regarded as an optimal randomized one for the time series search problem, and randomization is useless for the one-way trading problem.
algorithmic applications in management | 2005
Feifeng Zheng; Wenqiang Dai; Peng Xiao; Yun Zhao
This paper studies the on-line production order scheduling problem where each preemption causes a penalty, and the objective is to maximize the net profit, i.e., the total weights of completed orders minus the total penalties caused by preemptions. Two greedy strategies are shown to be at best
International Journal of Production Research | 2017
Zhanguo Zhu; Feifeng Zheng; Chengbin Chu