Abstract
Sentimental analysis is a method for distinguishing proof of articulation, mentality, or sensations of clients. It characterized as bad, positive, good, ominous, and so on from a piece of text in the record. Recommendation systems are important intelligent systems that assume a crucial part in giving specific data to users. Deep learning emerged as an important approach to settling opinion order issues in the late days. This research proposes a novel technique in generic sentimental analysis for web data classification with a recommendation system in social media analytics using machine learning techniques. Here, the web data input is processed, and remove missing values and normalization. Then the processed data is classified using convolutional discriminant kernel component analysis and their data recommendation in social media using reinforcement multilayer neural networks. The experimental analysis is carried out for various social media datasets regarding the accuracy, average precision, recall, actual positive rate, and F-measure. The proposed technique attained an accuracy of 98%, average precision of 79%, recall of 72%, real positive rate of 63%, and F-measure of 68%.
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Sekaran, R., Rajeyyagari, S., Munnangi, A.K., Parasuraman, M., Ramachandran, M., Kumar, A. (2024). Generic Sentimental Analysis in Web Data Recommendation Based on Social Media Scalable Data Analytics Using Machine Learning Architecture. In: Swaroop, A., Polkowski, Z., Correia, S.D., Virdee, B. (eds) Proceedings of Data Analytics and Management. ICDAM 2023. Lecture Notes in Networks and Systems, vol 785. Springer, Singapore. https://doi.org/10.1007/978-981-99-6544-1_26
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DOI: https://doi.org/10.1007/978-981-99-6544-1_26
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