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A Novel Parallelized LSTM For Detecting Internet Food Safety

机译:一种用于检测互联网食品安全的新型并行化LSTM

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摘要

Food safety is a major problem concerning people's livelihood. With the advent of the era of Internet, many people choose to order food online, while the regulation of online food safety is faced with enormous challenges. Through the analysis of the comments data from third-party platform, a food safety evaluation dataset of violation and risk is constructed. In order to find the relationship between the comment data and risks level of online food, a novel parallelized distributed long and short term memory network model is proposed to predict the risk value of merchants, and an early warning system for network takeout merchants is established.
机译:食品安全是关于人民生计的一个主要问题。随着互联网时代的出现,许多人选择在线订购食物,而在线食品安全的监管面临着巨大的挑战。通过分析来自第三方平台的评论数据,构建了违规和风险的食品安全评估数据集。为了找到在线食品的评论数据和风险程度之间的关系,提出了一种新颖的并行分布式长期和短期记忆网络模型,以预测商家的风险价值,并建立了网络撤销商家的预警系统。

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