Please use this identifier to cite or link to this item: http://hdl.handle.net/123456789/5179
Title: Deciphering Business Transactions from Point Process and Time Series Perspectives
Authors: Tan Wai Hong 
Keywords: Point Process Models;Time Series Analysis;Business Transactions;Forecasting;Stochastic Modeling
Issue Date: 25-Oct-2023
Publisher: Caknawan UMK
Abstract: 
This article explores the application of point process and time series models in analyzing business transactions. Point processes excel in modeling event timing (such as customer arrivals), while time series models are effective for forecasting aggregated data (such as sales). Using examples from an online retail platform, the article highlights the importance of choosing the right model based on data characteristics and research goals, suggesting a synergistic blend for comprehensive insights into optimizing business transactions.
URI: http://hdl.handle.net/123456789/5179
DOI: 2948-5037
Appears in Collections:Faculty of Entrepreneurship and Business - Other Publication
Faculty of Entrepreneurship and Business - Other Publication

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