ISSN 2394-5125
 


    Drug Recommendation System based on Sentiment Analysis of Drug Reviews using Multi-Layer Perception (2019)


    Sharath Pokala, Sathish Parvatham, Bandari Nithya
    JCR. 2019: 319-332

    Abstract

    Since coronavirus has shown up, inaccessibility of legitimate clinical resources is at its peak, like the shortage of specialists and healthcare workers, lack of proper equipment and medicines etc. The entire medical fraternity is in distress, which results in numerous individual's demise. Due to unavailability, individuals started taking medication independently without appropriate consultation, making the health condition worse than usual. As of late, machine learning has been valuable in numerous applications, and there is an increase in innovative work for automation. This work intends to present a drug recommender system that can drastically reduce specialist’s heap. To overcome from above problem author of this paper introducing sentiment and machine learning based drug recommendation system which will accept disease names from patient and then recommend DRUG and simultaneously display SENTIMENT rating based on reviews given by old users based on their experience. This work introduces the multi-layer perception (MLP) based drug recommendation system. The term frequency – inverse document frequency (TF-IDF) feature extraction method is used to deep features from the pre-processed dataset. The MLP classifier with TF-IDF feature extraction will result in superior performance compared to other models. To implement this work, DRUGREVIEW dataset was used from UCI machine learning website. Finally, the simulations revealed that the proposed TF-IDF and MLP resulted in superior performance as compared to UCI model.

    Description

    » PDF

    Volume & Issue

    Volume 6 Issue-7

    Keywords