Health App Recommendation System using Ensemble Multimodel Deep Learning
Nowadays, mobile devices and apps are meant to fulfill the needs of various people in society. But, mobile app Stores are facing major challenges in recommending proper apps for users. Recommending mobile apps for users according to personal preference and various mobile device limitations is theref...
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          | Published in | Journal of engineering science and technology review Vol. 13; no. 5; pp. 7 - 19 | 
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| Main Authors | , , | 
| Format | Journal Article | 
| Language | English | 
| Published | 
          
        2020
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| Online Access | Get full text | 
| ISSN | 1791-9320 1791-2377 1791-2377  | 
| DOI | 10.25103/jestr.135.03 | 
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| Summary: | Nowadays, mobile devices and apps are meant to fulfill the needs of various people in society. But, mobile app Stores are facing major challenges in recommending proper apps for users. Recommending mobile apps for users according to personal preference and various mobile device limitations is therefore important. In this scenario, there is a huge need for developing recommender systems (RS) for the user’s community in enabling critical mobile apps such as Health based Apps. Recommendation Systems perform an extensive survey on the collection of user reviews, preferences and opinions to discover recommendations of suitable applications to the users' community. In this paper, we have designed an aspect-based recommendation framework by performing three tasks: such as identifying the mentions associated with item aspects in user reviews, extracting the sentiment related opinions using Latent Semantic Analysis of such aspects in the reviews, and perform the opinion mining from all of the aspects to generate enhanced recommendations with Ensemble Multimodel Deep Learning (EMDL). EMDL comprises of two state-of- the-art classifiers such as Deep Neural Networks (DNN) and Long Short Term Memory (LSTM). In contrast to the prior work, we conducted a series of experiments with several state-of-art deep learning models to extract useful recommendations. The achieved results show that classification with outperforms in all the aspects based on various evaluation metrics when compared to the rest of the models. | 
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| ISSN: | 1791-9320 1791-2377 1791-2377  | 
| DOI: | 10.25103/jestr.135.03 |