Impact Factor (2025): 6.9
DOI Prefix: 10.47001/IRJIET
Using
skewed sequential data, the study explores the effectiveness of numerous
sequential models designed for binary classification tasks. The dataset under
investigation consists of 5,595 testing samples and 13,055 training samples, a
structure that presents significant difficulties because of uneven labelling.
The researchers carefully go through pretreatment procedures, which include
text data encoding and effective methods for handling missing information, in
order to address this. The study employs and examines a wide range of
algorithms, which reflects the heterogeneous sequential modelling environment.
A variety of neural network architectures are included in the arsenal: CNN,
CNN-RNN, RCNN. The binary classification job at hand is used to thoroughly
assess each architecture, revealing both its advantages and disadvantages. The
study's evaluation approach, which presents a wide range of measures indicating
consistently excellent performance overall, is its key component. Among these
algorithms stand out as the best with an astounding 97% accuracy rate on a
variety of evaluation metrics. This strong performance highlights their ability
to handle sequential data with unbalanced labels and establishes a standard for
further work in related fields. Beyond its empirical results, the study is
important because it provides a well-designed assessment approach that may be
used as a benchmark by practitioners facing similar problems. Through the
clarification of important concepts related to model selection and performance
evaluation, the study provides professionals and academics with crucial
resources to efficiently traverse the complex terrain of sequential modelling.
Country : Iraq
IRJIET, Volume 8, Issue 7, July 2024 pp. 53-61