A study on the efficacy of natural language generation techniques for similar writing personalities
Abstract
Over the past two decades, the domain of Natural Language Processing has undergone
a remarkable transformation enabling machines to generate text, summarize
content, paraphrase and analyze sentiment. The captivating idea of analyzing and
copying someone’s writing style is no longer impossible. Pushing boundaries further,
we have embarked on a journey to implement such a model for the Bengali language
by utilizing the approach of style transfer through the application of deep learning
using LLM. One’s writing personality can be identified by training the model
by imputing a set of documents (notes, books, etc) authored by the writers only.
The system will be able to extract important information to recreate sentences with
similar structural properties used by the author. Additionally, it will also be able
to detect whether a particular sentence structure synchronizes with that author’s
distinctive style. The outcome of our model aims to fulfill the need of a particular
writing taste of an author, as requested by the user. In essence, our model blends
technology and art to write in a way that is reminiscent of their favorite Bengali
author. Our proposed model not only skillfully excels in authorship classification
and mimicking their style, but also stands resilient against potential adversarial attacks,
making it a strong and unyielding system that aligns well with our research
objective.