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We confirm that this work is original and has not been published elsewhere, nor is it currently under consideration for publication elsewhere.We believe that this manuscript is appropriate for publication because It is feasible to extract the sentiment from the data by examining its numerous elements using an aspect-based sentiment analysis text analysis technique known as (ABSA). The ABSA approach analyses textual information and links the emotions to various textual elements. Due to its effectiveness, ABSA has recently grown significantly in importance. The researchers are looking at new methodologies and techniques for dealing with complex ABSA scenarios because of the growing importance of ABSA.Please address all correspondence concerning this manuscript to me at anushree.anushree.goud@gmail.com.Thank you for your consideration of this manuscript.Sincerely,Anushree Goud.Bindu Garg.","order":2,"name":"Ethics","group":{"name":"EthicsHeading","label":"Conflicts of interests"}}]}}