TY - JOUR
T1 - Gleaning museum visitors’ behaviors by analyzing questions asked in a mobile app
AU - Pérez Cortés, Luis E.
AU - Ha, Jesse
AU - Su, Man
AU - Nelson, Brian
AU - Bowman, Catherine
AU - Bowman, Judd
N1 - Funding Information:
This work was supported by the National Science Foundation [Grant Number 1438825].
Publisher Copyright:
© 2023, Association for Educational Communications and Technology.
PY - 2023
Y1 - 2023
N2 - This study explores the feasibility of forming detailed inferences about museum visitor behavior based on analysis of data collected via Dr. Discovery—a mobile question-and-answer app. We analyzed 5656 questions asked by 795 visitor groups recorded by Dr. Discovery across two museums in the American Southwest. Analysis of this data supported the act of intuiting visitor movement through museum exhibit halls without the use of costly tracking or location technology by leveraging question keyword content, knowledge of exhibit hall layout, and question timestamp information. Additionally, data on question topic frequency enabled us to infer visitor engagement levels with specific exhibit hall content. We conclude that analysis of seemingly limited app-based data carries implications for the practice of museum evaluation since evaluators can gain evidence-based insight into visitor behaviors as well as illustrate helpful and promising technology-supported alternatives for conducting affordable, dependable, and scalable evaluations.
AB - This study explores the feasibility of forming detailed inferences about museum visitor behavior based on analysis of data collected via Dr. Discovery—a mobile question-and-answer app. We analyzed 5656 questions asked by 795 visitor groups recorded by Dr. Discovery across two museums in the American Southwest. Analysis of this data supported the act of intuiting visitor movement through museum exhibit halls without the use of costly tracking or location technology by leveraging question keyword content, knowledge of exhibit hall layout, and question timestamp information. Additionally, data on question topic frequency enabled us to infer visitor engagement levels with specific exhibit hall content. We conclude that analysis of seemingly limited app-based data carries implications for the practice of museum evaluation since evaluators can gain evidence-based insight into visitor behaviors as well as illustrate helpful and promising technology-supported alternatives for conducting affordable, dependable, and scalable evaluations.
KW - App-based data collection
KW - Data-driven behavioral analysis
KW - Museum evaluation
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U2 - 10.1007/s11423-023-10208-1
DO - 10.1007/s11423-023-10208-1
M3 - Article
AN - SCOPUS:85148496344
SN - 1042-1629
JO - AV communication review
JF - AV communication review
ER -