کد مقاله | کد نشریه | سال انتشار | مقاله انگلیسی | نسخه تمام متن |
---|---|---|---|---|
553602 | 873520 | 2012 | 8 صفحه PDF | دانلود رایگان |
![عکس صفحه اول مقاله: Using online search data to forecast new product sales Using online search data to forecast new product sales](/preview/png/553602.png)
Search engines are rapidly emerging to be the “go-to” sites for consumers to learn more about a product, concept or a term of interest, irrespective of the initial channel in which the interest originated — text, radio, TV, multi-media channels, word of mouth, etc. In this paper we argue that data on the search terms used by consumers can provide valuable measures and indicators of consumer interest in a product, concept or a term. Such data can be particularly valuable to managers in gauging potential product interest in a new product launch context or consumption interest in the post-release context. Based on this premise, we develop a model of pre-launch search activity and link the pre-launch search behavior and product characteristics to early sales of the product, thus providing a useful forecasting tool. Applying the model in the context of motion pictures, we find that search term usage follows rather predictable patterns in the pre-launch and post-launch periods and the model provides significant power in forecasting release week sales as a function of pre-release search activity. With advertising data included in the model, we find that the pre-release search data offers additional explanatory and forecasting power, thus highlighting the ability of the search data to capture other factors, such as possibly word-of-mouth, in impacting early sales. We offer specific insights into how managers can use search volume data and the model to plan their new product release.
► We use online search volume and search patterns to forecast new product sales.
► Consumers' search terms are good indicators of their interest in a product or concept.
► We develop and apply our model to forecast opening week sales of movies.
► Our results show that model forecasts have high predictive power.
► We show that search data capture factors other than advertising that impact sales.
Journal: Decision Support Systems - Volume 52, Issue 3, February 2012, Pages 604–611