Authors :
S.M.A.N.M Subasinghe
Volume/Issue :
Volume 9 - 2024, Issue 1 - January
Google Scholar :
http://tinyurl.com/4aabnz66
Scribd :
http://tinyurl.com/4vd4dr8d
DOI :
https://doi.org/10.5281/zenodo.10638915
Abstract :
Data has become a crucial element for
contemporary enterprises; however, deriving practical
insights from its immense volume remains an intricate
obstacle. This paper examines the capabilities of three bio-
inspired computational intelligence (CI) methods - Genetic
Algorithms (GAs), Fuzzy Logic (FL), and Swarm
Intelligence (SI) - in improving data analytics for business
optimization and decision-making. The researcher
thoroughly examines the fundamental principles of each
technique, emphasizing their inherent advantages and
appropriateness for addressing practical business
challenges. By reviewing recent research and real-world
examples, the researcher illustrates how Genetic
Algorithms (GAs) can enhance the efficiency of resource
allocation, Fuzzy Logic (FL) can effectively handle
uncertainty in risk assessment, and Swarm Intelligence (SI)
can streamline logistics and scheduling processes. In
conclusion, highlight the synergistic and hybrid methods
emerging in this field. These approaches are leading to
enhanced value extraction from data and pushing the limits
of business intelligence.
Keywords :
Data Analytics, Business Intelligence, Genetic Algorithms, Fuzzy Logic, Swarm Intelligence, Optimization, Enterprise Decision-Making, Case Studies.
Data has become a crucial element for
contemporary enterprises; however, deriving practical
insights from its immense volume remains an intricate
obstacle. This paper examines the capabilities of three bio-
inspired computational intelligence (CI) methods - Genetic
Algorithms (GAs), Fuzzy Logic (FL), and Swarm
Intelligence (SI) - in improving data analytics for business
optimization and decision-making. The researcher
thoroughly examines the fundamental principles of each
technique, emphasizing their inherent advantages and
appropriateness for addressing practical business
challenges. By reviewing recent research and real-world
examples, the researcher illustrates how Genetic
Algorithms (GAs) can enhance the efficiency of resource
allocation, Fuzzy Logic (FL) can effectively handle
uncertainty in risk assessment, and Swarm Intelligence (SI)
can streamline logistics and scheduling processes. In
conclusion, highlight the synergistic and hybrid methods
emerging in this field. These approaches are leading to
enhanced value extraction from data and pushing the limits
of business intelligence.
Keywords :
Data Analytics, Business Intelligence, Genetic Algorithms, Fuzzy Logic, Swarm Intelligence, Optimization, Enterprise Decision-Making, Case Studies.