Hyperparamaters Fine Tuning for Bidirectional Long Short Term Memory on Food Delivery

Rahman Rahman, Teguh Iman Hermanto, Meriska Defriani
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Abstract

Food delivery is growing rapidly in Indonesia. Every food delivery order holds big promotions to attract users’ attention, so it has advantages and disadvantages. However, users only focus on evaluating drivers and restaurants, so the company does not get feedback on its services. This research aimed to understand user sentiment and maximize model accuracy with hyperparameters and fine-tuning. Sentiment analysis can be used to determine user sentiment based on reviews, and the results of this analysis can provide suggestions for companies. The bidirectional long short-term memory method was used for sentiment analysis to understand a word’s meaning better. The Bidirectional Short-Term Memory model andWord2Vec extraction features were proven to be better than several other extraction modelsand features. The dataset was balanced, and the hyperparameters in the model and optimization could also improve accuracy. So, the Gofood and Shopeefood research results had an accuracy of 98.1%, and Grabfood’s was 97.4%.
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超配位体对食物传递的双向长短期记忆进行微调
送餐服务在印尼发展迅速。每个送餐订单都会举行大型促销活动来吸引用户的注意力,因此有利有弊。然而,用户只关注对司机和餐馆的评价,因此公司无法获得对其服务的反馈。本研究旨在了解用户情感,并通过超参数和微调最大限度地提高模型的准确性。情感分析可用于根据评论确定用户情感,分析结果可为公司提供建议。双向长短期记忆法被用于情感分析,以更好地理解单词的含义。事实证明,双向短时记忆模型和Word2Vec提取特征优于其他几种提取模型和特征。数据集是均衡的,模型中的超参数和优化也能提高准确性。因此,Gofood 和 Shopeefood 的研究结果准确率为 98.1%,Grabfood 为 97.4%。
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