Bangla natural language inference
Abstract
Natural Language Inference (NLI) plays a vital role in our interpretation of textual
data. Understanding texts is often difficult due to the logical and contextual
motivations behind them. However, with the help of a text inference model, we
can decode it. Our focus will be on Bengali Language Text inference, and we believe
it will be useful in understanding the meaning of texts. In this thesis, we
will introduce a high-quality Bangla Natural Language Inference dataset. We will
also develop a benchmark model that will be able to effectively comprehend the
complex semantic and logical relations among texts. The model will use complex
deep-learning techniques to draw more meaningful conclusions from the texts. The
research topic proposes many benefits, e.g., creating machines that will implement
this model to create an effective question-answering system, an information retrieval
system, sentiment analysis, and a decision maker.