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CookingQA: Answering Questions and Recommending Recipes Based on Ingredients

机译:Cookingqa:根据成分回答问题和推荐食谱

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摘要

In today’s world where an individual is becoming more and more busy and independent, the use of recommendation-based systems is steadily increasing. Thus, making available professional knowledge to the common man in a short-span quite necessary. The aim of our recipe recommendation system is to recommend recipes to users based on their questions. To make the recommendation model important as well as meaningful, it is pertinent to display only those recommendations that have a greater probability to be fit for the asked question. We have addressed this challenge by working on a threshold parameter generated from the recommendation engine. Apart from this, we have also included a question classification (QC) task together with the question answering (QA) module. The QA module is used to extract the requisite answers from the recommended recipe based on the class label obtained from QC. The main contribution of this work is the proposal of a robust recommendation approach by enabling analysis of threshold estimation and proposal of a suitable dataset. The final output of the recommendation system obtains benchmark results on the human evaluation (HE) metric. Our code, pretrained models and the dataset will be made publicly available.
机译:在当今个人变得越来越繁忙和独立的世界中,使用推荐的系统的使用稳步增加。因此,在短跨度中为普通人提供专业知识。我们的配方推荐系统的目的是根据他们的问题推荐给用户的食谱。为了使推荐模型重要以及有意义的模型,只能显示那些具有更大概率适合所要求的问题的建议。我们通过研究从推荐引擎生成的阈值参数来解决了这一挑战。除此之外,我们还包括一个问题分类(QC)任务以及问题应答(QA)模块。 QA模块用于根据从QC获得的类标签从推荐的配方中提取必要的答案。这项工作的主要贡献是通过允许分析阈值估计和合适数据集的提案来提出强大推荐方法的提议。推荐系统的最终产出获得人类评估(HE)度量的基准结果。我们的代码,备用模型和数据集将公开可用。

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