ProdRev:一个DNN框架,用于授权客户使用生成式预训练变压器

Aakash Gupta, Nataraj Das
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引用次数: 0

摘要

疫情发生后,消费者使用电子商务的偏好加快了。由于单个产品的多个评论(有时是数千个评论)中提供了大量信息,这可能会导致买家决策瘫痪。这种情况剥夺了消费者的权利,他们不能指望自己去看这么多评论,因为这很耗时,而且会让他们感到困惑。有各种商业工具可用,它们使用评分机制来获得调整后的分数。它可以提醒用户注意潜在的审查操作。本文提出了一个框架,该框架对生成式预训练变压器进行微调,以更好地理解这些评论。此外,使用“常识”来做出更好的决定。这些模型有超过130亿个参数。为了根据我们的需求对模型进行微调,我们使用了生成式预训练变压器(GPT3)中的居里引擎。通过使用生成模型,我们引入了抽象摘要。而不是使用简单的提取方法来总结评论。这引出了评论之间的真实关系,而不是简单的复制粘贴。这为用户引入了“常识”元素,并帮助他们快速做出正确的决定。向用户提供经过处理的评论的优点和缺点。因此,用户/客户可以自己做决定。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ProdRev: A DNN framework for empowering customers using generative pre-trained transformers
Following the pandemic, customers, preference for using e-commerce has accelerated. Since much information is available in multiple reviews (sometimes running in thousands) for a single product, it can create decision paralysis for the buyer. This scenario disempowers the consumer, who cannot be expected to go over so many reviews since its time consuming and can confuse them. Various commercial tools are available, that use a scoring mechanism to arrive at an adjusted score. It can alert the user to potential review manipulations. This paper proposes a framework that fine-tunes a generative pre-trained transformer to understand these reviews better. Furthermore, using "common-sense" to make better decisions. These models have more than 13 billion parameters. To fine-tune the model for our requirement, we use the curie engine from generative pre-trained transformer (GPT3). By using generative models, we are introducing abstractive summarization. Instead of using a simple extractive method of summarizing the reviews. This brings out the true relationship between the reviews and not simply copy-paste. This introduces an element of "common sense" for the user and helps them to quickly make the right decisions. The user is provided the pros and cons of the processed reviews. Thus the user/customer can take their own decisions.
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