Abstract:
A system which caters the mobility requirements/travel needs in real time with user demand
is known as Mobility on Demand system (MoDS). Global companies like Uber, Lyft, and local
company like PickMe can be considered as examples for a Mobility on Demand systems. With
the prevailing rapid growth of these MoDS, there is an explosion in system data where massive
amounts of information related to customer rides are gathered on a daily basis. Due to this
enormous volume of data, there is a potential for exploiting data mining and machine learning
technologies to make the service smart and improve the management functionalities of the
system.
Even though there is a vast amount of data at hand, the lack of systematic modelling
techniques in MoDS is delaying the businesses from achieving smart systems with improved
and personalized services. However, when considering similar E-commerce systems, user
profiling and segmentation can be identified as the foundation towards smart improved service
and management. Hence it is crucial to form the necessary framework towards user profiling
and segmentation in MoDS. Research work found in our work is two-fold. First, we introduce
a systematic aggregated and anonymous analysis schemes towards user profiling and
segmentation in MoDS. Starting from the feature extraction specific to the MoDS, a detailed
methodology for building the profile vectors is defined by this work in the following sections.
Then consequently, we extended the methodology towards enabling recommender
systems in MoDS in order to improve the service. Moreover, under the recommender system
methodology, a novel deep Collaborative Filtering method is introduced, and evaluation
results show that the new model is capable of outperforming the current state-of-the-art
techniques for Collaborative Filtering. The outcome under the recommender system for MoD
is a hybrid system which incorporates all the profile vectors built in the customer profiling
phase. Evaluation of the overall recommender system with historical data shows a significant
improvement in recommendations related to MoD services.
Citation:
Kumarage, K.T.S. (2019). Customer profiling to improve service and management of mobility on demand (MOD) Systems [Master’s theses, University of Moratuwa]. Institutional Repository University of Moratuwa. http://dl.lib.mrt.ac.lk/handle/123/16173