基于ML和大数据分析的混合方法的饮食推荐系统

M. Lambay, S.Pakkir Mohideen, Dr. S. Pakkir Mohideen
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引用次数: 2

摘要

推荐是各行各业的人都使用的有用的建议。然而,推荐系统的使用在现代应用中起着至关重要的作用。它们存在于不同的领域,比如电子商务。对于医疗保健行业来说,建议起着非常关键的作用。这个行业具有重要意义,因为它与人们的生活和福祉有关。人类的健康取决于遵循的饮食习惯。考虑到这一事实,在本文中,我们调查了健康饮食建议。现有的医疗保健推荐系统对这一领域关注较少。从文献中可以了解到,大多数关于健康建议的框架本质上是理论性的。正如食物决定健康一样,它应该被赋予至高无上的重要性。在本文中,我们提出了一种基于人工智能(AI)的大数据分析混合机制。特别是我们使用机器学习(ML)来生成健康饮食建议。该系统被称为混合推荐系统(HRS)。它涉及自然语言处理(NLP)和机器学习的混合方法。提出了一种健康饮食智能推荐算法(IR-HD),用于分析数据并提供健康饮食建议。IR-HD可以生成关于健康饮食的建议,并超越现有的模型。推荐系统采用Python数据科学平台实现。实验结果表明,该系统能够提供高质量的推荐,并且在性能上比目前的技术水平有所提高。
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A Hybrid Approach Based Diet Recommendation System Using ML and Big Data Analytics
Recommendations are useful suggestions used by people from all walks of life. However, the usage of recommender systems plays a vital role in modern applications. They are found in different domains such as E-commerce. Concerning the health care industry, recommendations play a very crucial role. This industry has significance as it is linked to the lives of people and their well-being. Human health depends on the diet followed. Keeping this fact in mind, in this paper, we investigated healthy diet recommendations. The recommender systems that are existing in healthcare focused a little in this area. From the literature, it is understood that most of the frameworks on health recommendations are theoretical in nature. As food decides health, it is to be given paramount importance. In this paper, we proposed a hybrid mechanism based on Artificial Intelligence (AI) for big data analytics. Particularly we used Machine Learning (ML) for generating healthy diet recommendations. The proposed system is known as Hybrid Recommender System (HRS). It involves a hybrid approach with Natural Language Processing (NLP) and machine learning. An algorithm named Intelligent Recommender for Healthy Diet (IR-HD) is proposed to analyze data and provide healthy diet recommendations. IR-HD could generate recommendations on a healthy diet and outperform existing models. Python data science platform is used to implement the recommender system. The results of experiments showed that the system is capable of providing quality recommendations and it has performance improvement over the state of the art.
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