Studying and Clustering Cities Based on Their Non-Emergency Service Requests

This study offers a new perspective in analyzing 311 service requests (SRs) across the country by representing cities based on the types of their SRs. This not only uncovers temporal patterns of SRs in each city over the years but also detects cities with the most or least similarity to other cities...

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Main Author: Mahdi Hashemi
Format: Article
Language:English
Published: MDPI AG 2021-08-01
Series:Information
Subjects:
Online Access:https://www.mdpi.com/2078-2489/12/8/332
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spelling doaj-c2756eba486f4d0da664d6b568c8323f2021-08-26T13:54:14ZengMDPI AGInformation2078-24892021-08-011233233210.3390/info12080332Studying and Clustering Cities Based on Their Non-Emergency Service RequestsMahdi Hashemi0Department of Information Sciences and Technology, George Mason University, Fairfax, VA 22030, USAThis study offers a new perspective in analyzing 311 service requests (SRs) across the country by representing cities based on the types of their SRs. This not only uncovers temporal patterns of SRs in each city over the years but also detects cities with the most or least similarity to other cities based on their SR types. The first challenge is to gather 311 SRs for different cities and standardize their types since they differ in various cities. Implementing our analyses on close to 42 million SR records in 20 cities from 2006 to 2019 is the second challenge. Representing clusters of cities and outliers effectively, and providing justifications for them, is the last challenge. Our attempt resulted in 79 standardized SR types. We applied the principal component analysis to depict cities on a two-dimensional canvas based on their standardized SR types. Among our main findings are the following: many cities are observing a fall in requests regarding the condition of roads and sidewalks but a rise in requests concerning transportation and traffic; requests regarding garbage, cleaning, rodents, and complaints have also been rising in some cities; new types of requests have emerged and soared in recent years, such as requests for information and regarding shared mobility devices; requests about parking meters, information, sidewalks, curbs, graffities, and missed garbage pick up have the highest variance in their rates across different cities, i.e., they have a large rate in some cities while a low rate in others; the most consistent outliers, in terms of SR types, are Washington DC, Baltimore, Las Vegas, Philadelphia, Chicago, and Baton Rouge.https://www.mdpi.com/2078-2489/12/8/332311 service requestsdata miningclusteringspatial–temporal analysis
collection DOAJ
language English
format Article
sources DOAJ
author Mahdi Hashemi
spellingShingle Mahdi Hashemi
Studying and Clustering Cities Based on Their Non-Emergency Service Requests
Information
311 service requests
data mining
clustering
spatial–temporal analysis
author_facet Mahdi Hashemi
author_sort Mahdi Hashemi
title Studying and Clustering Cities Based on Their Non-Emergency Service Requests
title_short Studying and Clustering Cities Based on Their Non-Emergency Service Requests
title_full Studying and Clustering Cities Based on Their Non-Emergency Service Requests
title_fullStr Studying and Clustering Cities Based on Their Non-Emergency Service Requests
title_full_unstemmed Studying and Clustering Cities Based on Their Non-Emergency Service Requests
title_sort studying and clustering cities based on their non-emergency service requests
publisher MDPI AG
series Information
issn 2078-2489
publishDate 2021-08-01
description This study offers a new perspective in analyzing 311 service requests (SRs) across the country by representing cities based on the types of their SRs. This not only uncovers temporal patterns of SRs in each city over the years but also detects cities with the most or least similarity to other cities based on their SR types. The first challenge is to gather 311 SRs for different cities and standardize their types since they differ in various cities. Implementing our analyses on close to 42 million SR records in 20 cities from 2006 to 2019 is the second challenge. Representing clusters of cities and outliers effectively, and providing justifications for them, is the last challenge. Our attempt resulted in 79 standardized SR types. We applied the principal component analysis to depict cities on a two-dimensional canvas based on their standardized SR types. Among our main findings are the following: many cities are observing a fall in requests regarding the condition of roads and sidewalks but a rise in requests concerning transportation and traffic; requests regarding garbage, cleaning, rodents, and complaints have also been rising in some cities; new types of requests have emerged and soared in recent years, such as requests for information and regarding shared mobility devices; requests about parking meters, information, sidewalks, curbs, graffities, and missed garbage pick up have the highest variance in their rates across different cities, i.e., they have a large rate in some cities while a low rate in others; the most consistent outliers, in terms of SR types, are Washington DC, Baltimore, Las Vegas, Philadelphia, Chicago, and Baton Rouge.
topic 311 service requests
data mining
clustering
spatial–temporal analysis
url https://www.mdpi.com/2078-2489/12/8/332
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