Jayesh Patil


2023

With the ever-expanding pool of information accessible on the Internet, it has become increasingly challenging for readers to sift through voluminous data and derive meaningful insights. This is particularly noteworthy and critical in the context of documents such as financial reports and large-scale media reports. In the realm of finance, documents are typically lengthy and comprise numerical values. This research delves into the extraction of insights through text summaries from financial data, based on the user’s interests, and the identification of clues from these insights. This research presents a straightforward, allencompassing framework for conducting querybased summarization of financial documents, as well as analyzing the sentiment of the summary. The system’s performance is evaluated using benchmarked metrics, and it is compared to State-of-The-Art (SoTA) algorithms. Extensive experimentation indicates that the proposed system surpasses existing pre-trained language models.