Implementation of Multi-Agent with a Finite State Machine Approach in the Attendance Issue Reporting System at PT. XYZ

Authors

Abstract

Operational issues in digital attendance systems such as 
recognition errors, network disruptions, or forgotten credentials 
are still frequently reported through informal channels, resulting 
in unstructured records that are hard to trace and prone to 
duplication or fraud. This study proposes a conversational, 
report-driven attendance incident system that combines a 
multi-agent approach with a finite state machine (FSM) to keep 
dialogues structured, preserve conversational context, and ensure 
data completeness. The system performs automatic information 
extraction from user inputs using a large language model, and 
conducts evidence pre-validation via optical character 
recognition and multimodal classification prior to human 
verification. 
The research methods include organizational needs analysis, 
design of the data model and interaction flow, formulation of FSM 
rules to govern dialogue stages, and integration of conversational 
intelligence, information extraction, and evidence validation 
components. Evaluation follows User Acceptance Testing (UAT) 
grounded in realistic business workflows at PT. XYZ, focusing on 
three aspects: (1) time efficiency compared to the manual 
reporting process, (2) data consistency and completeness by 
comparing chatbot variants with and without FSM control, and 
(3) reduction of initial manual workload for administrators during 
verification. 
Experimental results show the system accelerates reporting by 
≥90% relative to the manual method, yields higher completeness 
with the FSM-controlled chatbot (approximately 96% complete 
versus ~70% without FSM), and achieves an ≈70% reduction in 
early administrative intervention. Evidence validation using text 
recognition and multimodal classification attains ~90–95% 
accuracy for common cases, effectively serving as a pre-screen 
before human review. These findings indicate that a multi-agent 
approach with FSM control can improve the speed, traceability, 
and reliability of attendance incident reporting. 

Published

2026-06-15