Causally Aware Feature Selection for Explainable Prediction of Indian Summer Monsoon Rainfall from Global Climatic Indices

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The paper studied how to identify global climatic drivers of variability in Indian Summer Monsoon Rainfall (ISMR) using 30 candidate indices and explainable, causally informed feature selection. Using 3-monthly mean feature values across different lag windows, the authors computed Granger causality scores between each driver and ISMR anomaly, then selected predictors that met a 95% confidence criterion at their best lag values, evaluating predictive performance with multiple linear regression, XGBoost, random forest, an artificial neural network, and a time-varying statistical regressor. They reported about a 40% improvement in prediction accuracy versus using the original driver set, with post-hoc SHAP analysis highlighting sea surface temperature and wind-speed variability over the southwest Indian Ocean and southwest Pacific Ocean as crucial for the 1871–2015 period. The paper is a preprint and does not present peer-reviewed results, which is a stated limitation. The paper does not explicitly discuss endometriosis or adenomyosis; it was included in the corpus via a keyword match in the upstream search index.

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Causally Aware Feature Selection for Explainable Prediction of Indian Summer Monsoon Rainfall from Global Climatic Indices | Authorea try { document.documentElement.classList.add('js'); } catch (e) { } var _gaq = _gaq || []; _gaq.push(['_setAccount', 'G-8VDV14Y67G']); _gaq.push(['_trackPageview']); (function() { var ga = document.createElement('script'); ga.type = 'text/javascript'; ga.async = true; ga.src = ('https:' == document.location.protocol ? 'https://ssl' : 'http://www') + '.google-analytics.com/ga.js'; var s = document.getElementsByTagName('script')[0]; s.parentNode.insertBefore(ga, s); })(); Skip to main content Preprints Collections Wiley Open Research IET Open Research Ecological Society of Japan All Collections About About Authorea FAQs Contact Us Quick Search anywhere Search for preprint articles, keywords, etc. Search Search ADVANCED SEARCH SCROLL This is a preprint and has not been peer reviewed. Data may be preliminary. 9 February 2026 V1 Latest version Share on Causally Aware Feature Selection for Explainable Prediction of Indian Summer Monsoon Rainfall from Global Climatic Indices Authors : Deepayan Chakraborty 0000-0002-8163-0244 [email protected] , Priyanka Goyal , Adway Mitra , and Ravi Sundaram Authors Info & Affiliations https://doi.org/10.22541/au.177067315.53665944/v1 79 views 66 downloads Contents Abstract Supplementary Material Information & Authors Metrics & Citations View Options References Figures Tables Media Share Abstract Indian Summer Monsoon Rainfall (ISMR) is one of the key factors responsible for shaping India's socioeconomic landscape. ISMR is calculated by taking the average monthly rainfall over June to September (JJAS) for the Indian region. The seasonal variability of ISMR is driven by several climatic phenomena (El-Niño Southern Oscillation, Indian Ocean Dipole, etc.), which are interconnected through teleconnections. Seasonal forecasting of ISMR at considerable lead times is still an extremely challenging problem. The proposed work aims to identify the global drivers that contribute the most to ISMR variability, so that the prediction accuracy of the Machine Learning models can be improved. In this work, 30 such potential drivers are identified from the state of the art, followed by dropping of correlated drivers. We have 3-monthly mean values of each feature at different lag windows. Then, the Granger Causality score of each feature with the ISMR anomaly is calculated, and the features that show 95%confidence with the best lag values are selected as the predictors for ISMR. The predictive power of these features with adjusted lags are evaluated using Multiple Linear Regression (MLR), XGBoost (XGBoost), Random Forest Regressor (RF), Artificial Neural Network (ANN), and Time-Varying Statistical Regressor (TV-Stat). The results show a improved prediction accuracy by 40% over the original set of drivers. In addition, a post-hoc analysis of the effect of the selected drivers on ISMR predictions and extreme ISMR events are performed using Shapley Additive exPlanations(SHAP). This analysis leads to an important conclusion that the Sea Surface Temperature (SST) and wind speed variability of the southwest Indian Ocean and southwest Pacific Ocean are crucial factors for ISMR predictions for the period 1871-2015. Supplementary Material File (acm_conference_proceedings_primary_article_template.pdf) Download 2.38 MB Information & Authors Information Version history V1 Version 1 09 February 2026 Copyright This work is licensed under a Non Exclusive No Reuse License. Keywords climatic drivers feature engineering granger causality ismr prediction Authors Affiliations Deepayan Chakraborty 0000-0002-8163-0244 [email protected] View all articles by this author Priyanka Goyal View all articles by this author Adway Mitra View all articles by this author Ravi Sundaram View all articles by this author Funding Information Ministry of Education, India SPARC/2019-2020/P1585/SL Adway Mitra Metrics & Citations Metrics Article Usage 79 views 66 downloads .FvxKWukQNSOunydq8rnd { width: 100px; } Citations Download citation Deepayan Chakraborty, Priyanka Goyal, Adway Mitra, et al. Causally Aware Feature Selection for Explainable Prediction of Indian Summer Monsoon Rainfall from Global Climatic Indices. Authorea . 09 February 2026. DOI: https://doi.org/10.22541/au.177067315.53665944/v1 If you have the appropriate software installed, you can download article citation data to the citation manager of your choice. Simply select your manager software from the list below and click Download. For more information or tips please see 'Downloading to a citation manager' in the Help menu . Format Please select one from the list RIS (ProCite, Reference Manager) EndNote BibTex Medlars RefWorks Direct import Tips for downloading citations document.getElementById('citMgrHelpLink').addEventListener('click', function() { popupHelp(this.href); return false; }); $(".js__slcInclude").on("change", function(e){ if ($(this).val() == 'refworks') $('#direct').prop("checked", false); $('#direct').prop("disabled", ($(this).val() == 'refworks')); }); View Options View options PDF View PDF Figures Tables Media Share Share Share article link Copy Link Copied! Copying failed. 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