2019
DOI: 10.1007/978-3-030-10767-3_1
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Introduction to Learning Automata Models

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Cited by 19 publications
(8 citation statements)
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References 127 publications
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“…A similar dynamic mechanism for the aggregation of packets in IoT and Low power and Lossy Networks (LLNs) to decrease energy consumption and increase battery life was proposed in [37]. In the proposed scheme, each node is equipped with a learning automaton [38], which grants permission to the node to aggregate small packets that need to be aggregated into a larger one, and denies aggregation permission for some packets that need to be transmitted immediately.…”
Section: Packet Aggregation In Iot and Wireless Sensor Networkmentioning
confidence: 99%
“…A similar dynamic mechanism for the aggregation of packets in IoT and Low power and Lossy Networks (LLNs) to decrease energy consumption and increase battery life was proposed in [37]. In the proposed scheme, each node is equipped with a learning automaton [38], which grants permission to the node to aggregate small packets that need to be aggregated into a larger one, and denies aggregation permission for some packets that need to be transmitted immediately.…”
Section: Packet Aggregation In Iot and Wireless Sensor Networkmentioning
confidence: 99%
“…In this method, the LP‐based algorithms require heavy computational overhead and long running time. Han et.al [28] proposed two algorithms, a Greedy algorithm and a genetic algorithm. The Greedy‐based algorithm can find a faster solution than other exploratory algorithms; however, it may fail to find an optimal solution due to the local search of this algorithm. Some of the features of a learning automaton that make it suitable to many applications include the following [29]: It can be used without any priori information about the underlying application. It is useful for applications with large amounts of uncertainty. It has simple structure and easy software and hardware implementation. It requires a very low and simple feedback from the environment. The action set of LA can be a set of symbolic or numeric values. Optimization of learning automata algorithms does not require an objective function to analyse customizable parameter functions. A learning automaton requires little mathematical operation, which makes it useful to real‐time applications. It has flexibility and analytical transfer tractability, which are required for most applications. One of the restrictions of LA appears when it is to optimize a continuous function. LA needs to discrete the parameter space so that LA actions can obtain the possible values of the relevant parameters.…”
Section: Continuous Action‐set Learning Automatamentioning
confidence: 99%
“…Some of the features of a learning automaton that make it suitable to many applications include the following [29]: It can be used without any priori information about the underlying application. It is useful for applications with large amounts of uncertainty. It has simple structure and easy software and hardware implementation. It requires a very low and simple feedback from the environment. The action set of LA can be a set of symbolic or numeric values. Optimization of learning automata algorithms does not require an objective function to analyse customizable parameter functions. A learning automaton requires little mathematical operation, which makes it useful to real‐time applications. It has flexibility and analytical transfer tractability, which are required for most applications. …”
Section: Continuous Action‐set Learning Automatamentioning
confidence: 99%
“…Availed erroneousness and duplication of data are major IoT organization-based underprovided to automate its processes [107], [115]. RL set of rules and extrapolative modeling algorithms can expressively improve this situation.…”
Section: A Physical Data Entrymentioning
confidence: 99%