In today's tech-savvy world every industry is trying to formulate methods for recommending products by combining several techniques and algorithms to form a pool that would bring forward the most enhanced models for making the predictions. Building on these lines is our paper focused on the application of sentiment analysis for recommendation in the insurance domain. We tried building the following Machine Learning models namely, Logistic Regression, Multinomial Naive Bayes, and the mighty Random Forest for analyzing the polarity of a given feedback line given by a customer. Then we used this polarity along with other attributes like Age, Gender, Locality, Income, and the list of other products already purchased by our existing customers as input for our recommendation model. Then we matched the polarity score along with the user's profiles and generated the list of insurance products to be recommended in descending order. Despite our model's simplicity and the lack of the key data sets, the results seemed very logical and realistic. So, by developing the model with more enhanced methods and with access to better and true data gathered from an insurance industry may be the sector could be very well benefitted from the amalgamation of sentiment analysis with a recommendation.
翻译:在当今的技术-保存世界中,每个行业都在努力制定产品推荐方法,方法是将几种技术和算法结合起来,形成一个集合点,提出最先进的预测模型。以这些思路为基础,我们的文件侧重于在保险领域应用情绪分析建议。我们尝试建立以下机器学习模型,即物流回归、多子蜂群和强大的随机森林,以分析客户给出的反馈线的极性。然后,我们利用这种极性和其他属性,如年龄、性别、地点、收入,以及我们现有客户已经购买的其他产品清单,作为我们建议模型的投入。然后,我们把极性评分与用户概况相匹配,并编制了保险产品清单,建议按降序排列。尽管我们的模型简单明细,缺少关键数据集,结果似乎非常合乎逻辑和现实。因此,通过以更先进的方法开发模型,并利用从保险行业收集的更好和真实的数据,该部门可能从情感分析与建议合并中受益。