| dc.description.abstract | This study develops and evaluates an ensemble deep learning model combining Convolutional
Neural Networks (CNN), Bidirectional Long Short-Term Memory (BiLSTM) networks, and an
Attention Mechanism (AM) to predict judgments in Kenyan civil cases. With Kenya's judiciary
facing a backlog exceeding 400,000 cases, this research addresses critical efficiency and
consistency challenges. The CNN+BiLSTM+AM architecture extracts key textual features from
legal documents, captures sequential dependencies in legal arguments, and prioritizes relevant
information through attention weighting, providing both accurate predictions and interpretable
results. Using stratified sampling across court levels, the study analyzes civil cases to identify
influential predictors of judicial outcomes, including legal representation disparities, citation
patterns, and procedural factors. Results demonstrate the model's superior performance compared
to baseline approaches, with implications for case management, resource allocation, and access to
justice. By providing data-driven insights into judicial decision-making, this research contributes
to addressing systemic inefficiencies in Kenya's legal system while establishing a methodological
framework applicable across similar jurisdictions. The findings support Kenya's judicial reform
efforts by offering an innovative, technologically driven approach to enhancing transparency,
consistency, and efficiency in civil litigation. | en_US |