
Bangla Natural Language Processing: A Comprehensive Analysis of Classical, Machine Learning, and Deep Learning-Based Methods
Category:- Journal; Year:- 2022
Discipline:- Electronics and Communication Engineering Discipline
School:- Science, Engineering & Technology School
Abstract
The Bangla language is the seventh
most spoken language, with 265 million native and non-native speakers
worldwide. However, English is the predominant language for online resources
and technical knowledge, journals, and documentation. Consequently, many
Bangla-speaking people, who have limited command of English, face hurdles to
utilize English resources. To bridge the gap between limited support and
increasing demand, researchers conducted many experiments and developed
valuable tools and techniques to create and process Bangla language materials.
Many efforts are also ongoing to make it easy to use the Bangla language in the
online and technical domains. There are some review papers to understand the
past, previous, and future Bangla Natural Language Processing (BNLP) trends.
The studies are mainly concentrated on the specific domains of BNLP, such as
sentiment analysis, speech recognition, optical character recognition, and text
summarization. There is an apparent scarcity of resources that contain a
comprehensive review of the recent BNLP tools and methods. Therefore, in this
paper, we present a thorough analysis of 75 BNLP research papers and categorize
them into 11 categories, namely Information Extraction, Machine Translation,
Named Entity Recognition, Parsing, Parts of Speech Tagging, Question Answering
System, Sentiment Analysis, Spam and Fake Detection, Text Summarization, Word
Sense Disambiguation, and Speech Processing and Recognition. We study articles
published between 1999 to 2021, and 50% of the papers were published after
2015. Furthermore, we discuss Classical, Machine Learning and Deep Learning
approaches with different datasets while addressing the limitations and current
and future trends of the BNLP.