Popularity estimation of interesting locations from visitor’s trajectories using fuzzy inference system

Identifying the interesting places through GPS trajectory mining has been well studied based on the visitor’s frequency. However, the places popularity estimation based on the trajectory analysis has not been explored yet. The limitation in the majority of the traditional popularity estimation and p...

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Main Authors: Tiwari Shivendra, Kaushik Saroj
Format: Article
Language:English
Published: De Gruyter 2016-02-01
Series:Open Computer Science
Subjects:
Online Access:https://doi.org/10.1515/comp-2016-0002
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spelling doaj-7e5c2a3164044c09a7751683cdcf0beb2021-09-06T19:19:42ZengDe GruyterOpen Computer Science2299-10932016-02-016182410.1515/comp-2016-0002comp-2016-0002Popularity estimation of interesting locations from visitor’s trajectories using fuzzy inference systemTiwari Shivendra0Kaushik Saroj1Department of Computer Science and Engineering, Indian Institute of Technology Delhi Bharti Building, Hauzkhas, New Delhi, 110016, IndiaDepartment of Computer Science and Engineering, Indian Institute of Technology Delhi Bharti Building, Hauzkhas, New Delhi, 110016, IndiaIdentifying the interesting places through GPS trajectory mining has been well studied based on the visitor’s frequency. However, the places popularity estimation based on the trajectory analysis has not been explored yet. The limitation in the majority of the traditional popularity estimation and place user-rating based methods is that all the participants are given the same importance. In reality, it heavily depends on the visitor’s category, for example, international visitors make distinct impact on popularity. The proposed method maintains a registry to keep the information about the visited users, their stay time and the travel distance from their home location. Depending on the travel nature the visitors are labeled as native, regional and tourist for each place in question. It considers the fact that the higher stay in a place is an implicit measure of the greater likings. Theweighted frequency is eventually fuzzified and applied rule based fuzzy inference system (FIS) to compute popularity of the places in terms of the ratings ∈ [0, 5]. We have evaluated the proposed method using a large real road GPS trajectory of 182 users for identifying the ratings for the collected 26807 point of interests (POI) in Beijing (China).https://doi.org/10.1515/comp-2016-0002location based services (lbs) trajectory databases trajectory mining region of interest (roi) place ratings popularity estimation fuzzy inference system
collection DOAJ
language English
format Article
sources DOAJ
author Tiwari Shivendra
Kaushik Saroj
spellingShingle Tiwari Shivendra
Kaushik Saroj
Popularity estimation of interesting locations from visitor’s trajectories using fuzzy inference system
Open Computer Science
location based services (lbs)
trajectory databases
trajectory mining
region of interest (roi)
place ratings
popularity estimation
fuzzy inference system
author_facet Tiwari Shivendra
Kaushik Saroj
author_sort Tiwari Shivendra
title Popularity estimation of interesting locations from visitor’s trajectories using fuzzy inference system
title_short Popularity estimation of interesting locations from visitor’s trajectories using fuzzy inference system
title_full Popularity estimation of interesting locations from visitor’s trajectories using fuzzy inference system
title_fullStr Popularity estimation of interesting locations from visitor’s trajectories using fuzzy inference system
title_full_unstemmed Popularity estimation of interesting locations from visitor’s trajectories using fuzzy inference system
title_sort popularity estimation of interesting locations from visitor’s trajectories using fuzzy inference system
publisher De Gruyter
series Open Computer Science
issn 2299-1093
publishDate 2016-02-01
description Identifying the interesting places through GPS trajectory mining has been well studied based on the visitor’s frequency. However, the places popularity estimation based on the trajectory analysis has not been explored yet. The limitation in the majority of the traditional popularity estimation and place user-rating based methods is that all the participants are given the same importance. In reality, it heavily depends on the visitor’s category, for example, international visitors make distinct impact on popularity. The proposed method maintains a registry to keep the information about the visited users, their stay time and the travel distance from their home location. Depending on the travel nature the visitors are labeled as native, regional and tourist for each place in question. It considers the fact that the higher stay in a place is an implicit measure of the greater likings. Theweighted frequency is eventually fuzzified and applied rule based fuzzy inference system (FIS) to compute popularity of the places in terms of the ratings ∈ [0, 5]. We have evaluated the proposed method using a large real road GPS trajectory of 182 users for identifying the ratings for the collected 26807 point of interests (POI) in Beijing (China).
topic location based services (lbs)
trajectory databases
trajectory mining
region of interest (roi)
place ratings
popularity estimation
fuzzy inference system
url https://doi.org/10.1515/comp-2016-0002
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