2018
DOI: 10.1111/poms.12707
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The Operational Value of Social Media Information

Abstract: While the value of using social media information has been established in multiple business contexts, the field of operations and supply chain management have not yet explored the possibilities it offers in improving firms' operational decisions. This study attempts to do that by empirically studying whether using publicly available social media information can improve the accuracy of daily sales forecasts.We collaborated with an online apparel retailer to assemble a dataset that combines (1) detailed internal… Show more

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Cited by 273 publications
(254 citation statements)
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References 63 publications
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“…Based on our work with an online retailer, we bolster Cui et al. () result by showing that adding customer search data to time series models improves out‐of‐sample forecast errors.…”
supporting
confidence: 51%
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“…Based on our work with an online retailer, we bolster Cui et al. () result by showing that adding customer search data to time series models improves out‐of‐sample forecast errors.…”
supporting
confidence: 51%
“…The intent of this note is to bolster the primary idea in Cui et al. () that user‐generated content can be helpful in improving product level forecasts. We have been working with an online retailer of speciality food over the last several years.…”
Section: Introductionmentioning
confidence: 99%
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“…In line with Cui et al. () and Ferreira et al. (), we argue that short‐term sales forecast accuracy is also important for setting dynamic prices, such as those in online retailing.…”
Section: Resultssupporting
confidence: 88%
“…Cui et al. () use the quantity and quality of Facebook comments to improve forecast errors, while Boone et al. () use consumer searchers on Google to improve product forecasts.…”
Section: Demand Managementmentioning
confidence: 99%