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Bibliographic Details
Main Author: Meng Qu
Format: Recurso educativo Open Access
Language:en
Published: 2024
Subjects:
Online Access:https://eric.ed.gov/?id=EJ1430085
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author Meng Qu
author_facet Meng Qu
Meng Qu
collection Education Resources Information Center
contents Exploring Patron Behavior in an Academic Library: A Wi-Fi-Connection Data Analysis Meng Qu Academic Libraries Users (Information) Use Studies Space Utilization Decision Support Systems Library Facilities Cost Effectiveness Behavior Patterns Library Administration Telecommunications Computer Networks Data Collection Facility Guidelines Public Health This paper introduces a Patron Counting and Analysis (PCA) system that leverages Wi-Fi-connection data to monitor space utilization and analyze visitor patterns in academic libraries. The PCA system offers real-time crowding information to the public and a comprehensive visitor analysis dashboard for library administrators. The system's development was driven by the need for occupancy restrictions during the pandemic, ensuring a spacious environment for library visitors as well as balancing between efficient utilization and adhering to social distancing regulations. Traditional methods of patron behavior performance and library spatial analysis, such as manual head counting or card-swiping systems, often incur additional costs for labor, hardware installation, or software subscription. The PCA system, however, utilizes existing Wi-Fi-connection data, providing a cost-effective solution to represent patron demographics and spatial usage. Limitations may arise when patrons do not carry Wi-Fi-enabled devices or during periods of low Wi-Fi service functionality. Implemented in Node.js and integrated with Python Flask framework and related libraries, the PCA system was piloted at the King Library in Miami University, successfully demonstrating a high validity compared to manually collected data. It filters out noise and redundancy, visualizes the occupancy index meter in real time, and generates statistical reports by linking user IDs with demographic information. The PCA system's reliability was validated through manually head counting data collected at the King Library in Miami University, establishing it as a reliable tool for library space management and patron analysis.
format Recurso educativo Open Access
id eric_EJ1430085
institution ERIC Institute of Education Sciences
language en
publishDate 2024
record_format eric
spellingShingle Exploring Patron Behavior in an Academic Library: A Wi-Fi-Connection Data Analysis
Meng Qu
Academic Libraries
Users (Information)
Use Studies
Space Utilization
Decision Support Systems
Library Facilities
Cost Effectiveness
Behavior Patterns
Library Administration
Telecommunications
Computer Networks
Data Collection
Facility Guidelines
Public Health
Exploring Patron Behavior in an Academic Library: A Wi-Fi-Connection Data Analysis Meng Qu Academic Libraries Users (Information) Use Studies Space Utilization Decision Support Systems Library Facilities Cost Effectiveness Behavior Patterns Library Administration Telecommunications Computer Networks Data Collection Facility Guidelines Public Health This paper introduces a Patron Counting and Analysis (PCA) system that leverages Wi-Fi-connection data to monitor space utilization and analyze visitor patterns in academic libraries. The PCA system offers real-time crowding information to the public and a comprehensive visitor analysis dashboard for library administrators. The system's development was driven by the need for occupancy restrictions during the pandemic, ensuring a spacious environment for library visitors as well as balancing between efficient utilization and adhering to social distancing regulations. Traditional methods of patron behavior performance and library spatial analysis, such as manual head counting or card-swiping systems, often incur additional costs for labor, hardware installation, or software subscription. The PCA system, however, utilizes existing Wi-Fi-connection data, providing a cost-effective solution to represent patron demographics and spatial usage. Limitations may arise when patrons do not carry Wi-Fi-enabled devices or during periods of low Wi-Fi service functionality. Implemented in Node.js and integrated with Python Flask framework and related libraries, the PCA system was piloted at the King Library in Miami University, successfully demonstrating a high validity compared to manually collected data. It filters out noise and redundancy, visualizes the occupancy index meter in real time, and generates statistical reports by linking user IDs with demographic information. The PCA system's reliability was validated through manually head counting data collected at the King Library in Miami University, establishing it as a reliable tool for library space management and patron analysis.
title Exploring Patron Behavior in an Academic Library: A Wi-Fi-Connection Data Analysis
topic Academic Libraries
Users (Information)
Use Studies
Space Utilization
Decision Support Systems
Library Facilities
Cost Effectiveness
Behavior Patterns
Library Administration
Telecommunications
Computer Networks
Data Collection
Facility Guidelines
Public Health
url https://eric.ed.gov/?id=EJ1430085