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Drug-based recommendation system based on deep learning approach for data optimization

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Abstract

In the current training, Artificial Neural Network (ANN) is utilized, which tuned by Particle Swarm Optimization (PSO) to the challenge of predicting for finance applications. Several researches have shown that ANN-based strategies are trustworthy ways to estimate LSM. Most ANN training methods, however, struggle with serious issues including poor learning rates and getting stuck in indigenous smallest amount. Optimization algorithms (OA) like PSO container increase ANN presentation. PSO prototypical applications to ANN exercise not engaged in success planning to determine network design or relevant elements. Thus, the current work concentrated scheduled the request of a mixture ANN prototypical to the forecast based on fuzzy. For the ANN and PSO-ANN network models, a huge amount of statistics (a record with 168,970 preparation records and 42,243 challenging records) was collected after the Finance application. This data were used to make exercise and challenging datasets. All of the PSO algorithm variables (including the system limitation and system loads) remained tuned to provide maximized ROI. The projected outcomes (e.g., from ANN, PSO-ANN) aimed at together records (e.g., training and testing) of the models were calculated by one numerical catalogs, namely, Root-Mean-Squared Error (RMSE). As a consequence, together replicas displayed worthy presentation; nevertheless, the hybrid ANN model might outperform ANN in terms of performance, as determined by the ranking mechanism that was created. For the ANN and hybrid ANN replicas, it container be derived that the PSO-ANN prototypical demonstrated more dependability in predicting compared to the ANN.

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Correspondence to C. Karthikeyan.

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Vianny, D.M.M., Vaddadi, S.A., Karthikeyan, C. et al. Drug-based recommendation system based on deep learning approach for data optimization. Soft Comput (2023). https://doi.org/10.1007/s00500-023-08742-4

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