Design and Development of a Real-Time Optimal Route Recommendation System Using Big Data for Tourists in Jeju Island

Nowadays researchers and engineers are trying to build travel route recommendation systems to guide tourists around the globe. The tourism industry is on the rise and it has attracted researchers to provide such systems for comfortable and convenient traveling. Mobile internet growth is increasing r...

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Main Authors: Faisal Mehmood, Shabir Ahmad, DoHyeun Kim
Format: Article
Language:English
Published: MDPI AG 2019-05-01
Series:Electronics
Subjects:
Online Access:https://www.mdpi.com/2079-9292/8/5/506
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spelling doaj-d3a02329d8624e1db791cc12c1eb544d2020-11-25T02:07:05ZengMDPI AGElectronics2079-92922019-05-018550610.3390/electronics8050506electronics8050506Design and Development of a Real-Time Optimal Route Recommendation System Using Big Data for Tourists in Jeju IslandFaisal Mehmood0Shabir Ahmad1DoHyeun Kim2Department of Computer Engineering, Jeju National University, Jeju 63243, KoreaDepartment of Computer Engineering, Jeju National University, Jeju 63243, KoreaDepartment of Computer Engineering, Jeju National University, Jeju 63243, KoreaNowadays researchers and engineers are trying to build travel route recommendation systems to guide tourists around the globe. The tourism industry is on the rise and it has attracted researchers to provide such systems for comfortable and convenient traveling. Mobile internet growth is increasing rapidly. Mobile data usage and traffic growth has increased interest in building mobile applications for tourists. This research paper aims to provide design and implementation of a travel route recommendation system based on user preference. Real-time big data is collected from Wi-Fi routers installed at more than 149 unique locations in Jeju Island, South Korea. This dataset includes tourist movement patterns collected from thousands of mobile tourists in the year 2016−2017. Data collection and analysis is necessary for a country to make public policies and development of the global travel and tourism industry. In this research paper we propose an optimal travel route recommendation system by performing statistical analysis of tourist movement patterns. Route recommendation is based on user preferences. User preference can vary over time and differ from one user to another. We have taken three main factors into consideration to the recommend optimal route i.e., time, distance, and popularity of location. Beside these factors, we have also considered weather and traffic condition using a third-party application program interfaces (APIs). We have classified regions into six major categories. Popularity of location can vary from season to season. We used a Naïve Bayes classifier to find the probability of tourists going to visit next location. Third-party APIs are used to find the longitude and latitude of the location. The Haversine formula is used to calculate the distance between unique locations. On the basis of these factors, we recommend the optimal route for tourists. The proposed system is highly responsive to mobile users. The results of this system show that the recommended route is convenient and allows tourists to visit maximum number of famous locations as compared to previous data.https://www.mdpi.com/2079-9292/8/5/506tourist movement patternroute predictionroute optimizationtravel route recommendationnaïve Bayes
collection DOAJ
language English
format Article
sources DOAJ
author Faisal Mehmood
Shabir Ahmad
DoHyeun Kim
spellingShingle Faisal Mehmood
Shabir Ahmad
DoHyeun Kim
Design and Development of a Real-Time Optimal Route Recommendation System Using Big Data for Tourists in Jeju Island
Electronics
tourist movement pattern
route prediction
route optimization
travel route recommendation
naïve Bayes
author_facet Faisal Mehmood
Shabir Ahmad
DoHyeun Kim
author_sort Faisal Mehmood
title Design and Development of a Real-Time Optimal Route Recommendation System Using Big Data for Tourists in Jeju Island
title_short Design and Development of a Real-Time Optimal Route Recommendation System Using Big Data for Tourists in Jeju Island
title_full Design and Development of a Real-Time Optimal Route Recommendation System Using Big Data for Tourists in Jeju Island
title_fullStr Design and Development of a Real-Time Optimal Route Recommendation System Using Big Data for Tourists in Jeju Island
title_full_unstemmed Design and Development of a Real-Time Optimal Route Recommendation System Using Big Data for Tourists in Jeju Island
title_sort design and development of a real-time optimal route recommendation system using big data for tourists in jeju island
publisher MDPI AG
series Electronics
issn 2079-9292
publishDate 2019-05-01
description Nowadays researchers and engineers are trying to build travel route recommendation systems to guide tourists around the globe. The tourism industry is on the rise and it has attracted researchers to provide such systems for comfortable and convenient traveling. Mobile internet growth is increasing rapidly. Mobile data usage and traffic growth has increased interest in building mobile applications for tourists. This research paper aims to provide design and implementation of a travel route recommendation system based on user preference. Real-time big data is collected from Wi-Fi routers installed at more than 149 unique locations in Jeju Island, South Korea. This dataset includes tourist movement patterns collected from thousands of mobile tourists in the year 2016−2017. Data collection and analysis is necessary for a country to make public policies and development of the global travel and tourism industry. In this research paper we propose an optimal travel route recommendation system by performing statistical analysis of tourist movement patterns. Route recommendation is based on user preferences. User preference can vary over time and differ from one user to another. We have taken three main factors into consideration to the recommend optimal route i.e., time, distance, and popularity of location. Beside these factors, we have also considered weather and traffic condition using a third-party application program interfaces (APIs). We have classified regions into six major categories. Popularity of location can vary from season to season. We used a Naïve Bayes classifier to find the probability of tourists going to visit next location. Third-party APIs are used to find the longitude and latitude of the location. The Haversine formula is used to calculate the distance between unique locations. On the basis of these factors, we recommend the optimal route for tourists. The proposed system is highly responsive to mobile users. The results of this system show that the recommended route is convenient and allows tourists to visit maximum number of famous locations as compared to previous data.
topic tourist movement pattern
route prediction
route optimization
travel route recommendation
naïve Bayes
url https://www.mdpi.com/2079-9292/8/5/506
work_keys_str_mv AT faisalmehmood designanddevelopmentofarealtimeoptimalrouterecommendationsystemusingbigdatafortouristsinjejuisland
AT shabirahmad designanddevelopmentofarealtimeoptimalrouterecommendationsystemusingbigdatafortouristsinjejuisland
AT dohyeunkim designanddevelopmentofarealtimeoptimalrouterecommendationsystemusingbigdatafortouristsinjejuisland
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