THE EFFECTS OF INCLUDING SOCIAL FACTORS IN RIDE-MATCHING ALGORITHMS ON THE PERFORMANCE AND THE QUALITY OF MATCHES

Omer Faruk Aydin, Ilgin Gökasar
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引用次数: 1

Abstract

Advancement in communication technologies has fostered alternative transport modes, such as ride-sharing. Ride-sharing aims to increase vehicle occupancy rates by matching riders with the drivers, who have empty seats on their vehicles and have similar routes and time schedules. Regarding to the success of a ride-sharing system, many researchers have been interested in efficient ride-matching algorithms. Ride-matching optimization problem is considered as NP-Hard Problem. In most of the ride-matching algorithms in the literature, to be able find matches at short notice some parameters were omitted. Hence, social characteristics and choices of participants, such as gender, age, employment status and willingness to socialize, were not included in many ride-matching algorithms. In this paper, the effects of including such factors in a ride-matching algorithm on the performance and the quality of the matches are investigated. Several ride-matching algorithms in the literature are simulated with randomly generated data. The simulation results show that when social factors are included the computation times and the quality of the matches increase significantly.
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包含社会因素的乘车匹配算法对匹配性能和质量的影响
通信技术的进步催生了其他交通方式,比如拼车。拼车的目的是通过匹配乘客和司机来提高车辆入住率,他们的车上有空位,并且有相似的路线和时间表。关于拼车系统的成功,许多研究者对高效的拼车匹配算法感兴趣。车次匹配优化问题被认为是NP-Hard问题。在大多数文献中的乘车匹配算法中,为了能够在短时间内找到匹配,省略了一些参数。因此,参与者的社会特征和选择,如性别、年龄、就业状况和社交意愿,并没有被纳入许多乘车匹配算法中。本文研究了在乘车匹配算法中加入这些因素对匹配性能和匹配质量的影响。用随机生成的数据模拟了文献中的几种乘车匹配算法。仿真结果表明,考虑社会因素后,匹配的计算次数和匹配质量均有显著提高。
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