Engineering for Crisis Management: A User-Centred Analysis of Disaster Mobile Applications
Pith reviewed 2026-05-23 22:47 UTC · model grok-4.3
The pith
Disaster mobile apps mostly prioritize response functions while providing limited support for preparedness and recovery phases.
A machine-rendered reading of the paper's core claim, the machinery that carries it, and where it could break.
Core claim
Analysis of 70 apps shows prioritization of response-related functionalities with limited support for preparedness and recovery; topic modelling and sentiment analysis of user reviews reveals critical challenges related to technical reliability, usability, accessibility, and information clarity.
What carries the argument
Categorization of apps by disaster focus, geographic scope, popularity, monetization, and features across the disaster lifecycle, followed by extraction, translation, topic modelling, and sentiment analysis of user reviews.
If this is right
- Developers should adopt lifecycle-oriented design that balances features across preparedness, response, and recovery.
- Apps need stronger multilingual support and technical robustness to reduce crashes and improve reliability.
- Integrating ongoing user feedback into development processes can improve accessibility and information clarity.
- Emergency management agencies can use these insights when commissioning or endorsing apps for public use.
Where Pith is reading between the lines
- Agencies might consider creating shared open data standards so apps can pull verified hazard information from official sources rather than duplicating efforts.
- Testing apps with diverse user groups during non-emergency periods could surface accessibility issues earlier than post-disaster reviews allow.
- Long-term maintenance funding models may be needed because one-time development often leaves apps outdated when hazard data or operating systems change.
Load-bearing premise
The 70 apps identified from literature and app stores form a representative sample of existing disaster apps, and the collected reviews plus topic modelling faithfully reflect genuine user concerns without selection or translation bias.
What would settle it
A broader survey of additional apps or a fresh set of user reviews that shows equal or greater support for preparedness and recovery phases, or identifies different primary complaints, would undermine the reported priorities and challenges.
Figures
read the original abstract
Disaster mobile apps play an increasingly important role in disseminating hazard information and supporting communities during emergency situations. This study presents a comprehensive analysis of these mobile applications, focusing on their features, user-reported challenges, and opportunities for improvement. We first examined the landscape of disaster mobile apps by analysing 70 apps identified through a combination of methods, including those from the literature, the Google Play Store, and the App Store. The analysis categorised apps based on disaster focus, geographic coverage, popularity, monetisation strategies, and features across the disaster lifecycle. We then extracted, translated and analysed user reviews using topic modelling and sentiment analysis to identify key concerns and recurring issues. The results show that most applications prioritise response-related functionalities, with limited support for preparedness and recovery. User feedback highlights critical challenges related to technical reliability, usability, accessibility, and information clarity. Based on these findings, we propose a set of recommendations for developers and emergency management agencies to improve the reliability, inclusiveness, and overall effectiveness of disaster mobile apps. These include adopting lifecycle-oriented design approaches, strengthening multilingual support, improving technical robustness, and integrating user feedback into development processes. This work contributes to the growing body of research on human-centred disaster risk reduction by providing empirical insights and actionable guidance for the design of more reliable and inclusive disaster communication systems.
Editorial analysis
A structured set of objections, weighed in public.
Referee Report
Summary. The paper analyzes 70 disaster mobile apps sourced from literature, Google Play Store, and App Store searches. Apps are categorized by disaster focus, geographic coverage, popularity, monetization, and features mapped to the disaster lifecycle phases. User reviews are extracted, translated, and analyzed via topic modeling and sentiment analysis to surface challenges in technical reliability, usability, accessibility, and information clarity. The central claims are that apps heavily prioritize response-phase functionalities with limited preparedness and recovery support, and that user feedback reveals recurring issues; recommendations for lifecycle-oriented design, multilingual support, and robustness are offered.
Significance. If the sample and review-analysis concerns are resolved, the work supplies empirical evidence on feature distribution and user pain points in disaster apps, supporting human-centered design in crisis management. The mixed-methods combination of feature taxonomy and review mining is a constructive contribution; the lifecycle framing and concrete recommendations for developers and agencies add practical value.
major comments (2)
- [Section 3] Section 3 (App Identification and Selection): No search strings, inclusion/exclusion criteria, geographic/language scope, or count of screened/discarded apps are reported for the literature + store searches that yielded the final 70 apps. This directly affects the representativeness claim and the generalizability of the lifecycle-feature counts.
- [Section 4.2] Section 4.2 (Review Processing and Topic Modelling): Non-English reviews are translated before topic modelling and sentiment analysis, yet no validation (back-translation, bilingual coder agreement, or error quantification) is described. Systematic distortion of topics or polarity cannot be ruled out and undermines the reported user challenges.
minor comments (2)
- [Abstract] Abstract and Section 2: The phrase 'comprehensive analysis' should be qualified given the acknowledged gaps in selection transparency.
- [Results] Tables/Figures showing feature distributions: Add explicit sample sizes per category and note any overlaps between the three data sources.
Simulated Author's Rebuttal
We thank the referee for the constructive feedback on our manuscript. The two major comments highlight important areas for improving methodological transparency, which we will address in the revision.
read point-by-point responses
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Referee: [Section 3] Section 3 (App Identification and Selection): No search strings, inclusion/exclusion criteria, geographic/language scope, or count of screened/discarded apps are reported for the literature + store searches that yielded the final 70 apps. This directly affects the representativeness claim and the generalizability of the lifecycle-feature counts.
Authors: We agree that the app identification and selection process requires more detailed reporting to support claims of representativeness. In the revised manuscript, Section 3 will be expanded to include the exact search strings used for the literature search and app store queries, the full set of inclusion/exclusion criteria applied, the geographic and language scope considered, and the counts of apps screened and discarded at each stage. These additions will allow readers to better assess the sample and the generalizability of the feature distribution findings. revision: yes
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Referee: [Section 4.2] Section 4.2 (Review Processing and Topic Modelling): Non-English reviews are translated before topic modelling and sentiment analysis, yet no validation (back-translation, bilingual coder agreement, or error quantification) is described. Systematic distortion of topics or polarity cannot be ruled out and undermines the reported user challenges.
Authors: We recognize that explicit validation of the translation step is necessary to strengthen confidence in the topic modeling and sentiment results. The revised Section 4.2 will describe any validation procedures performed (e.g., back-translation of a sample of reviews or inter-coder agreement checks) and, if formal validation was limited, will explicitly discuss this as a methodological limitation along with its potential implications for the identified user challenges. revision: yes
Circularity Check
No circularity: purely empirical aggregation of external app data and reviews
full rationale
The paper performs a landscape analysis of 70 disaster apps sourced from literature, Google Play, and App Store, followed by review extraction, translation, topic modelling, and sentiment analysis. No equations, fitted parameters, derivations, or self-citation chains appear in the provided text. All claims (response-phase prioritization, user challenges in reliability/usability) are direct outputs of the described external-data processing steps rather than reductions to prior author work or definitional inputs. The analysis is self-contained against external benchmarks and does not invoke uniqueness theorems or ansatzes from the authors' prior publications.
Axiom & Free-Parameter Ledger
Reference graph
Works this paper leans on
-
[1]
W. W. Attribution, Heavy precipitation hitting vulnerable communities in the uae and oman becoming an increasing threat as the climate warms – world weather attribution, https://www.worldweatherattribution.org/heavy- precipitation-hitting-vulnerable-communities-in- the-uae-and-oman-becoming-an-increasing-threat-as- the-climate-warms/, (Accessed on 07/10/2024)
work page 2024
-
[2]
E. Topics, How many people own smartphones? (2024-2029), https://explodingtopics.com/blog/smartphone-stats, (Ac- cessed on 03/19/2024) (2023)
work page 2024
-
[3]
M. L. Tan, R. Prasanna, K. Stock, E. E. Doyle, G. Leonard, D. Johnston, Usability factors influencing the continuance intention of disaster apps: A mixed-methods study, International Journal of Disaster Risk Reduction 50 (2020) 101874
work page 2020
-
[4]
M. L. Tan, R. Prasanna, K. Stock, E. E. Doyle, G. Leonard, D. John- ston, Understanding end-users’ perspectives: Towards developing usability guidelines for disaster apps, Progress in Disaster Science 7 (2020) 100118
work page 2020
- [5]
- [6]
-
[7]
U. F. E. M. Agency, 04 unit 4.doc, https://training. fema.gov/emiweb/downloads/is111_unit%204.pdf, (Accessed on 05/14/2024)
work page 2024
- [8]
-
[9]
M. L. Tan, R. Prasanna, K. Stock, E. Hudson-Doyle, G. Leonard, D. Johnston, Mobile applications in crisis informatics literature: A systematic review, International Journal of Disaster Risk Reduction 24 (2017) 297–311. doi:10.1016/j.ijdrr.2017.06.009
-
[10]
G. D. Haddow, K. S. Haddow, Chapter four - disaster coverage past and present, in: G. D. Haddow, K. S. Haddow (Eds.), Disaster Communications in a Changing Media World (Second Edition), second edition Edition, Butterworth-Heinemann, 2014, pp. 53–70
work page 2014
-
[11]
J. D ˛ abrowski, E. Letier, A. Perini, A. Susi, Analysing app reviews for software engineering: a systematic literature review, Empirical Software Engineering 27 (2) (2022) 43
work page 2022
-
[12]
N. Genc-Nayebi, A. Abran, A systematic literature review: Opinion mining studies from mobile app store user reviews, Journal of Systems and Software 125 (2017) 207–219
work page 2017
- [13]
-
[14]
A. F. de Araújo, R. M. Marcacini, Re-bert: automatic extraction of software requirements from app reviews using bert language model, in: Proceedings of the 36th annual ACM symposium on applied computing, 2021, pp. 1321–1327
work page 2021
-
[15]
N. Jha, A. Mahmoud, Mining non-functional requirements from app store reviews, Empirical Software Engineering 24 (2019) 3659–3695
work page 2019
-
[16]
M. Lu, P. Liang, Automatic classification of non-functional require- ments from augmented app user reviews, in: Proceedings of the 21st International Conference on Evaluation and Assessment in Software Engineering, 2017, pp. 344–353
work page 2017
-
[17]
Y . Man, C. Gao, M. R. Lyu, J. Jiang, Experience report: Understand- ing cross-platform app issues from user reviews, in: 2016 IEEE 27th international symposium on software reliability engineering (ISSRE), IEEE, 2016, pp. 138–149
work page 2016
-
[18]
Q. Chen, C. Chen, S. Hassan, Z. Xing, X. Xia, A. E. Hassan, How should i improve the ui of my app? a study of user reviews of popular apps in the google play, ACM Transactions on Software Engineering and Methodology (TOSEM) 30 (3) (2021) 1–38
work page 2021
- [19]
-
[20]
S. McIlroy, N. Ali, H. Khalid, A. E. Hassan, Analyzing and automat- ically labelling the types of user issues that are raised in mobile app reviews, Empirical Software Engineering 21 (2016) 1067–1106
work page 2016
-
[21]
D. Martens, W. Maalej, Towards understanding and detecting fake reviews in app stores, Empirical Software Engineering 24 (6) (2019) 3316–3355
work page 2019
-
[22]
E. Noei, F. Zhang, Y . Zou, Too many user-reviews! what should app developers look at first?, IEEE Transactions on Software Engineering 47 (2) (2019) 367–378
work page 2019
-
[23]
D. Martens, T. Johann, On the emotion of users in app reviews, in: 2017 IEEE/ACM 2nd International workshop on emotion awareness in software engineering (SEmotion), IEEE, 2017, pp. 8–14
work page 2017
-
[24]
W. Luiz, F. Viegas, R. Alencar, F. Mourão, T. Salles, D. Carvalho, M. A. Gonçalves, L. Rocha, A feature-oriented sentiment rating for mobile app reviews, in: Proceedings of the 2018 world wide web conference, 2018, pp. 1909–1918
work page 2018
- [25]
-
[26]
H. O. Obie, H. Du, K. Madampe, M. Shahin, I. Ilekura, J. Grundy, L. Li, J. Whittle, B. Turhan, H. Khalajzadeh, Automated detection, categorisation and developers’ experience with the violations of honesty in mobile apps, Empirical Software Engineering 28 (6) (2023) 134
work page 2023
-
[27]
R. A. Shams, W. Hussain, G. Oliver, A. Nurwidyantoro, H. Perera, J. Whittle, Society-oriented applications development: Investigating users’ values from bangladeshi agriculture mobile applications, in: Proceedings of the ACM/IEEE 42nd International Conference on Software Engineering: Software Engineering in Society, 2020, pp. 53–62
work page 2020
-
[28]
D. Bowie-DaBreo, C. Sas, H. Iles-Smith, S. Sünram-Lea, User per- spectives and ethical experiences of apps for depression: a qualitative analysis of user reviews, in: Proceedings of the 2022 CHI Conference on Human Factors in Computing Systems, 2022, pp. 1–24
work page 2022
-
[29]
P. Nema, P. Anthonysamy, N. Taft, S. T. Peddinti, Analyzing user perspectives on mobile app privacy at scale, in: Proceedings of the 44th International Conference on Software Engineering, 2022, pp. 112–124
work page 2022
-
[30]
L. Navarro De Corcuera, M. D. M. Barbero-Barrera, A. Campos Hi- dalgo, J. Recio Martínez, Assessment of the adequacy of mobile applications for disaster reduction 24 (5) 6197–6223. Muhamad et al.: Preprint submitted to Elsevier Page 17 of 19 A Comprehensive Study of Disaster Support Mobile Apps
-
[31]
B. Chembakottu, H. Li, F. Khomh, A large-scale exploratory study of android sports apps in the google play store, Information and Software Technology 164 (2023) 107321.doi:10.1016/j.infsof. 2023.107321
-
[32]
L. Navarro de Corcuera, M. d. M. Barbero-Barrera, A. Campos Hi- dalgo, J. Recio Martínez, Assessment of the adequacy of mobile applications for disaster reduction, Environment, Development and Sustainability 24 (5) (2021) 6197–6223. doi:10.1007/s10668- 021-01697-2
-
[33]
Lewis, 8 free apps that could save your life in japan, medium (Sep 2018)
R. Lewis, 8 free apps that could save your life in japan, medium (Sep 2018). URL https://medium.com/@robintlewis/8-free-apps-that- could-save-your-life-in-japan-8a8b6b61b955
work page 2018
-
[34]
of Encyclopaedia Britannica, List of countries (November 11 2019)
E. of Encyclopaedia Britannica, List of countries (November 11 2019). URL https://www.britannica.com/topic/list-of- countries-1993160
work page 2019
-
[35]
A. Sherif, Global market share held by mobile operating systems from 2009 to 2021, accessed: March 18, 2024 (2024). URL https://www.statista.com/statistics/272698/ global-market-share-held-by-mobile-operating- systems-since-2009/
work page 2009
-
[36]
BERTopic: Neural topic modeling with a class-based TF-IDF procedure
M. Grootendorst, Bertopic: Neural topic modeling with a class-based tf-idf procedure (2022). arXiv:2203.05794
work page internal anchor Pith review Pith/arXiv arXiv 2022
-
[37]
M. P. Grootendorst, Parameter tuning - bertopic, GitHub.io (2023). URL https://maartengr.github.io/BERTopic/getting_ started/parameter%20tuning/parametertuning.html#n_ components
work page 2023
-
[38]
UMAP: Uniform Manifold Approximation and Projection for Dimension Reduction
L. McInnes, J. Healy, J. Melville, Umap: Uniform manifold approx- imation and projection for dimension reduction (2020). arXiv: 1802.03426
work page internal anchor Pith review Pith/arXiv arXiv 2020
-
[39]
L. van der Maaten, G. Hinton, Visualizing data using t-sne, Journal of Machine Learning Research 9 (86) (2008) 2579–2605. URL http://jmlr.org/papers/v9/vandermaaten08a.html
work page 2008
-
[40]
L. McInnes, J. Healy, J. Melville, hdbscan: Hierarchical density based clustering, Journal of Open Source Software 2 (11) (2017) 205. doi:10.21105/joss.00205
-
[41]
B. Fu, J. Lin, L. Li, C. Faloutsos, J. Hong, N. Sadeh, Why people hate your app: making sense of user feedback in a mobile app store, in: Proceedings of the 19th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, KDD ’13, Association for Computing Machinery, New York, NY , USA, 2013, p. 1276–1284. doi:10.1145/2487575.2488202. URL ...
-
[42]
C. Hutto, E. Gilbert, Vader: A parsimonious rule-based model for sentiment analysis of social media text, in: Proceedings of the International AAAI Conference on Web and Social Media, V ol. 8, 2014, pp. 216–225. URL https://doi.org/10.1609/icwsm.v8i1.14550
-
[43]
J. L. Campbell, C. Quincy, J. Osserman, O. K. Pedersen, Coding in-depth semistructured interviews: Problems of unitization and in- tercoder reliability and agreement, Sociological methods & research 42 (3) (2013) 294–320. Muhamad et al.: Preprint submitted to Elsevier Page 18 of 19 A Comprehensive Study of Disaster Support Mobile Apps Table 9 Region-Speci...
work page 2013
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