Toy safety surveillance from online reviews

作者:

Highlights:

• A method for discovering danger words indicative of toy safety defects is proposed.

• The danger word list is contrasted with sentiment analysis approaches.

• Over one million online toy reviews are scored using different methods.

• Sentiment analysis is found to have low specificity vs. danger word lists.

• The danger word list is effective in finding reviews mentioning safety concerns.

摘要

Toy-related injuries account for a significant number of childhood injuries and the prevention of these injuries remains a goal for regulatory agencies and manufacturers. Text-mining is an increasingly prevalent method for uncovering the significance of words using big data. This research sets out to determine the effectiveness of text-mining in uncovering potentially dangerous children's toys. We develop a danger word list, also known as a “smoke word” list, from injury and recall text narratives. We then use the smoke word lists to score over one million Amazon reviews, with the top scores denoting potential safety concerns. We compare the smoke word list to conventional sentiment analysis techniques, in terms of both word overlap and effectiveness. We find that smoke word lists are highly distinct from conventional sentiment dictionaries and provide a statistically significant method for identifying safety concerns in children's toy reviews. Our findings indicate that text-mining is, in fact, an effective method for the surveillance of safety concerns in children's toys and could be a gateway to effective prevention of toy product-related injuries.

论文关键词:Online reviews,Safety surveillance,Toys,Injuries

论文评审过程:Received 4 December 2015, Revised 20 June 2016, Accepted 22 June 2016, Available online 26 June 2016, Version of Record 10 September 2016.

论文官网地址:https://doi.org/10.1016/j.dss.2016.06.016