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Using Semantic Features for Enhancing Car Pooling System

机译:使用语义特征增强拼车系统

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摘要

Nowadays the demand on carpooling system increases due to the need to decrease car crowdedness, saving fuel cost, decrease pollution, etc. Carpooling services depend on combining different passengers in one car who are willing to go to the same place in specific time. In this paper, a novel framework that utilizes trip profile and semantic of places (point of interest) is proposed. Users' trips are distinguished into routine trips and occasional trips. For occasional trips, the user is offered a similar destination based on the semantic of destination such that the new location is within accepted range or in the route with respect to drivers and other passengers. The proposed framework is applied on real dataset of New York taxi. Two techniques have been applied one based on route matching and other applied machine learning. The results show that the proposed framework outperforms tradition carpooling system by reducing total number of trips by 22.3
机译:如今,由于需要减少汽车拥挤,节省燃料成本,减少污染等原因,对拼车系统的需求不断增加。拼车服务取决于将愿意在特定时间前往同一地点的不同乘客组合在一起。在本文中,提出了一种新颖的框架,该框架利用旅行概况和地点(兴趣点)的语义。用户的旅行分为日常旅行和偶尔旅行。对于偶尔的旅行,基于目的地的语义为用户提供类似的目的地,以使新位置在相对于驾驶员和其他乘客的可接受范围内或在路线上。所提出的框架被应用于纽约出租车的真实数据集。已经应用了两种技术,一种是基于路线匹配,另一种是应用了机器学习。结果表明,拟议的框架将旅行总数减少了22.3,从而优于传统拼车系统

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