2023
DOI: 10.21203/rs.3.rs-3050181/v1
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Predictive Modeling of Menstrual Cycle Length: A Time Series Forecasting Approach

Abstract: A proper forecast of the menstrual cycle is meaningful for women's health, as it allows individuals to take preventive actions to minimize cycle-associated discomforts. In addition, precise prediction can be useful for planning important events in a woman's life, such as family planning. In this work, we explored the use of machine learning techniques to predict regular and irregular menstrual cycles. We implemented some time series forecasting algorithm approaches, such as AutoRegressive Integrated Moving Ave… Show more

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