Evolving Many-Objective Job Shop Scheduling Dispatching Rules via Genetic Programming With Adaptive Search Based on the Frequency of Features
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- @Article{Masood:2025:ACCESS,
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author = "Atiya Masood and Mansoor Ebrahim and Fahad Najeeb and
Syed {Muhammad Daniyal}",
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title = "Evolving Many-Objective Job Shop Scheduling
Dispatching Rules via Genetic Programming With Adaptive
Search Based on the Frequency of Features",
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journal = "IEEE Access",
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year = "2025",
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volume = "13",
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pages = "75020--75036",
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keywords = "genetic algorithms, genetic programming, Dispatching,
Schedules, Job shop scheduling, Optimisation, Feature
extraction, Search problems, Heuristic algorithms,
Processor scheduling, Delays, Adaptive search, feature
selection, hyper-heuristic, many-objective
optimisation",
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ISSN = "2169-3536",
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DOI = "
doi:10.1109/ACCESS.2025.3558521",
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abstract = "Job Shop Scheduling (JSS) is a critical application in
diverse fields, such as cloud computing and
manufacturing. Genetic Programming (GP) is acknowledged
for its wide use in evolving dispatching rules for JSS,
offering an automated approach to heuristic generation.
A dispatching rule can use many machine-related,
job-related, and system-related features to create
scheduling heuristics in JSS. Proper feature selection
is a critical factor for the success of heuristics.
Moreover, there can be many features in JSS whose
importance varies from one scenario to another. It has
been shown that irrelevant and redundant features can
adversely affect performance. Feature selection is a
promising task to select relevant features and reduce
genetic programming hyper-heuristics (GPHH) search
space. However, more research is needed to quantify the
contribution of features in the GPHH to many-objective
JSS. The proposed algorithm introduces an adaptive
search strategy that is implemented through
re-initialization during the evolutionary process. In
addition, relevant features are selected based on their
frequency of occurrence in diverse sets of best
individuals. The proposed algorithm, Adaptive Feature
Selection-GP-NSGA-III (AFS-GP-NSGA-III), is compared
with the FS-GP-NSGA-III and standard GP-NSGA-III on a
four-objective JSS problem. The experimental results
indicate that feature selection using GP and adaptive
search can improve the performance of the algorithm.
Furthermore, the findings suggest the practical
applicability of the proposed algorithm for generating
improved dispatching rules for training and unseen test
instances using only the selected relevant feature
subset.",
-
notes = "Also known as \cite{10955196}",
- }
Genetic Programming entries for
Atiya Masood
Mansoor Ebrahim
Fahad Najeeb
Syed Muhammad Daniyal
Citations