Knowledge refinement mechanism in agency using adaptive automata and genetic algorithms

Wasim Ahmad Khan, Muhammad Ayub, Muhammad Umer Quddoos, Liaqat Ali Waseem, Muhammad Abdul Basit Ur Rahim, Muzaffar Hameed, Muhammad Adeel, Arslan Ahmad Siddiqi, Muhammad Furqan Khan

Article ID: 9482
Vol 8, Issue 16, 2024


Abstract


Recent advancements in data mining techniques showcase expansive and effective insights. Yet, these insights often remain incomplete. In situations demanding optimal results, such incomplete knowledge from various agents falls short. This paper delves into the role of mobile agents engaging in data mining within a multi-agent environment. Each agent is tailored with distinct goals, mining data in line with its identified problem set. Mobile agents understand insights from relevant agents equipped with specialized data knowledge. Outcomes from diverse agents converge, serving as foundational data for mobile agents. This integration is facilitated by integrating adaptive automata and genetic algorithms, enhancing the mobile agent’s expertise on a particular task.

Keywords


adaptive automata; genetic algorithm; mobile agent

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DOI: https://doi.org/10.24294/jipd9482

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