An Interventional Approach to Real-Time Disaster Assessment via Causal Attribution
- URL: http://arxiv.org/abs/2509.11676v1
- Date: Mon, 15 Sep 2025 08:17:52 GMT
- Title: An Interventional Approach to Real-Time Disaster Assessment via Causal Attribution
- Authors: Saketh Vishnubhatla, Alimohammad Beigi, Rui Heng Foo, Umang Goel, Ujun Jeong, Bohan Jiang, Adrienne Raglin, Huan Liu,
- Abstract summary: We provide an alternative interventional tool that complements traditional disaster modelling tools by leveraging real-time data sources like satellite imagery, news, and social media.<n>Our tool also helps understand the causal attribution of different factors on the estimated severity, over any given region of interest.
- Score: 10.45092551295612
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Traditional disaster analysis and modelling tools for assessing the severity of a disaster are predictive in nature. Based on the past observational data, these tools prescribe how the current input state (e.g., environmental conditions, situation reports) results in a severity assessment. However, these systems are not meant to be interventional in the causal sense, where the user can modify the current input state to simulate counterfactual "what-if" scenarios. In this work, we provide an alternative interventional tool that complements traditional disaster modelling tools by leveraging real-time data sources like satellite imagery, news, and social media. Our tool also helps understand the causal attribution of different factors on the estimated severity, over any given region of interest. In addition, we provide actionable recourses that would enable easier mitigation planning. Our source code is publicly available.
Related papers
- Generalizing to Unseen Disaster Events: A Causal View [17.9089265435157]
We propose a method to reduce event- and domain-related biases, enhancing generalization to future events.<n>Our approach outperforms multiple baselines by up to +1.9% F1.
arXiv Detail & Related papers (2025-11-13T09:29:39Z) - Statistical Inference for Responsiveness Verification [15.571656327462142]
We introduce a formal validation procedure for the responsiveness of predictions with respect to interventions on their features.<n>We describe how to estimate responsiveness for the predictions of any model and any dataset using only black-box access.<n>We develop algorithms that construct these estimates by generating a uniform sample of reachable points.
arXiv Detail & Related papers (2025-07-02T21:50:08Z) - Physics-guided Active Sample Reweighting for Urban Flow Prediction [75.24539704456791]
Urban flow prediction is a nuanced-temporal modeling that estimates the throughput of transportation services like buses, taxis and ride-driven models.
Some recent prediction solutions bring remedies with the notion of physics-guided machine learning (PGML)
We develop a atized physics-guided network (PN), and propose a data-aware framework Physics-guided Active Sample Reweighting (P-GASR)
arXiv Detail & Related papers (2024-07-18T15:44:23Z) - CrisisSense-LLM: Instruction Fine-Tuned Large Language Model for Multi-label Social Media Text Classification in Disaster Informatics [50.122541222825156]
This study introduces a novel approach to disaster text classification by enhancing a pre-trained Large Language Model (LLM)<n>Our methodology involves creating a comprehensive instruction dataset from disaster-related tweets, which is then used to fine-tune an open-source LLM.<n>This fine-tuned model can classify multiple aspects of disaster-related information simultaneously, such as the type of event, informativeness, and involvement of human aid.
arXiv Detail & Related papers (2024-06-16T23:01:10Z) - Performative Time-Series Forecasting [64.03865043422597]
We formalize performative time-series forecasting (PeTS) from a machine-learning perspective.<n>We propose a novel approach, Feature Performative-Shifting (FPS), which leverages the concept of delayed response to anticipate distribution shifts.<n>We conduct comprehensive experiments using multiple time-series models on COVID-19 and traffic forecasting tasks.
arXiv Detail & Related papers (2023-10-09T18:34:29Z) - Spatio-temporal neural structural causal models for bike flow prediction [2.991894112851257]
The fundamental issue of managing bike-sharing systems is bike flow prediction.
Recent methods over-emphasize the contextual conditions on the transportation system.
We propose a Spatiotemporal-temporal Structure Causal Model.
arXiv Detail & Related papers (2023-01-19T01:39:21Z) - Dwelling Type Classification for Disaster Risk Assessment Using
Satellite Imagery [3.88838725116957]
Vulnerability and risk assessment of neighborhoods is essential for effective disaster preparedness.
Existing traditional systems, due to dependency on time-consuming and cost-intensive field surveying, do not provide a scalable way to decipher warnings and assess the precise extent of the risk at a hyper-local level.
In this work, machine learning was used to automate the process of identifying dwellings and their type to build a potentially more effective disaster vulnerability assessment system.
arXiv Detail & Related papers (2022-11-16T03:08:15Z) - auton-survival: an Open-Source Package for Regression, Counterfactual
Estimation, Evaluation and Phenotyping with Censored Time-to-Event Data [14.928328404160299]
We present auton-survival, an open-source repository of tools to streamline working with censored data.
We demonstrate the ability of auton-survival to rapidly support data scientists in answering complex health and epidemiological questions.
arXiv Detail & Related papers (2022-04-15T00:24:56Z) - Assessing out-of-domain generalization for robust building damage
detection [78.6363825307044]
Building damage detection can be automated by applying computer vision techniques to satellite imagery.
Models must be robust to a shift in distribution between disaster imagery available for training and the images of the new event.
We argue that future work should focus on the OOD regime instead.
arXiv Detail & Related papers (2020-11-20T10:30:43Z) - Forecasting COVID-19 daily cases using phone call data [0.0]
We propose a simple Multiple Linear Regression model optimised to use call data to forecast the number of daily confirmed cases.
Our proposed approach outperforms ARIMA, ETS and a regression model without call data, evaluated by three point forecast error metrics, one prediction interval and two probabilistic forecast accuracy measures.
arXiv Detail & Related papers (2020-10-05T18:07:07Z) - Counterfactual Predictions under Runtime Confounding [74.90756694584839]
We study the counterfactual prediction task in the setting where all relevant factors are captured in the historical data.
We propose a doubly-robust procedure for learning counterfactual prediction models in this setting.
arXiv Detail & Related papers (2020-06-30T15:49:05Z) - Enabling Counterfactual Survival Analysis with Balanced Representations [64.17342727357618]
Survival data are frequently encountered across diverse medical applications, i.e., drug development, risk profiling, and clinical trials.
We propose a theoretically grounded unified framework for counterfactual inference applicable to survival outcomes.
arXiv Detail & Related papers (2020-06-14T01:15:00Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.