Predicting online product sales via online reviews, sentiments, and promotion strategies: A big data architecture and neural network approach

Purpose - The purpose of this paper is to investigate if online reviews (e.g. valence and volume), online promotional strategies (e.g. free delivery and discounts) and sentiments from user reviews can help predict product sales. Design/methodology/approach - The authors designed a big data architect...

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Veröffentlicht in:International journal of operations & production management 2016-01, Vol.36 (4), p.358-383
Hauptverfasser: Chong, Alain Yee Loong, Li, Boying, Ngai, Eric W.T., Ch'ng, Eugene, Lee, Filbert
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container_issue 4
container_start_page 358
container_title International journal of operations & production management
container_volume 36
creator Chong, Alain Yee Loong
Li, Boying
Ngai, Eric W.T.
Ch'ng, Eugene
Lee, Filbert
description Purpose - The purpose of this paper is to investigate if online reviews (e.g. valence and volume), online promotional strategies (e.g. free delivery and discounts) and sentiments from user reviews can help predict product sales. Design/methodology/approach - The authors designed a big data architecture and deployed Node.js agents for scraping the Amazon.com pages using asynchronous input/output calls. The completed web crawling and scraping data sets were then preprocessed for sentimental and neural network analysis. The neural network was employed to examine which variables in the study are important predictors of product sales. Findings - This study found that although online reviews, online promotional strategies and online sentiments can all predict product sales, some variables are more important predictors than others. The authors found that the interplay effects of these variables become more important variables than the individual variables themselves. For example, online volume interactions with sentiments and discounts are more important than the individual predictors of discounts, sentiments or online volume. Originality/value - This study designed big data architecture, in combination with sentimental and neural network analysis that can facilitate future business research for predicting product sales in an online environment. This study also employed a predictive analytic approach (e.g. neural network) to examine the variables, and this approach is useful for future data analysis in a big data environment where prediction can have more practical implications than significance testing. This study also examined the interplay between online reviews, sentiments and promotional strategies, which up to now have mostly been examined individually in previous studies.
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source Emerald A-Z Current Journals
subjects Architecture
Data management
Discounts
Neural networks
Online
Sales
Scraping
Strategy
title Predicting online product sales via online reviews, sentiments, and promotion strategies: A big data architecture and neural network approach
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