This paper presents a simple and mighty metaheuristic algorithm, Jaya, which is applied to solve the team formation (TF) problem and it is a very fundamental problem in many databases and expert collaboration networks or web applications. The Jaya does not need any distinctive parameters that require comprehensive tuning, which is usually troublesome and inefficient. Among several optimization methods, Jaya is chosen for TFP because of its simplicity and it always avoids the worst solutions and moving towards the global best solution. This victorious nature makes Jaya Algorithm more powerful and significant as compared to any other contemporary optimization algorithms. To evaluate the efficiency of the Jaya Algorithm (JA) against another me...
In this paper, we introduce an education tool for learning metaheuristic algorithms that allows disp...
Several population-based metaheuristic optimization algorithms have been proposed in the last decade...
T-way testing is a sampling strategy that generates a subset of test cases from a pool of possible t...
This paper presents a comparative study of five metaheuristic algorithms, namely, salp swarm algorit...
Jaya is a new metaheuristic that in recent years, has been applied to numerous intractable optimizat...
The Team Formation Problem (TFP) has recently gained popularity in Operation Research (OR) . The cha...
International audienceIn this review paper, JAYA algorithm, which is a recent population-based algor...
The Jaya algorithm is arguably one of the fastest-emerging metaheuristics amongst the newest members...
Many metaheuristic methods have been proposed to solve engineering problems in literature studies. O...
Optimization problems relate to the problem of finding minimum or maximum values from a large pools ...
International audienceThis study throws the light on two metaheuristic algorithms and enable researc...
To solve optimization problems, in the field of engineering optimization, an optimal value of a spec...
This paper proposes a novel performance enhanced Jaya algorithm with a two group adaption (E-Jaya). ...
Meta-heuristics utilizing numerous parameters are more complicated than meta-heuristics with a coupl...
© 2016 The Authors. Published by Elsevier Ltd. The Team Formation problem (TFP) has become a well-kn...
In this paper, we introduce an education tool for learning metaheuristic algorithms that allows disp...
Several population-based metaheuristic optimization algorithms have been proposed in the last decade...
T-way testing is a sampling strategy that generates a subset of test cases from a pool of possible t...
This paper presents a comparative study of five metaheuristic algorithms, namely, salp swarm algorit...
Jaya is a new metaheuristic that in recent years, has been applied to numerous intractable optimizat...
The Team Formation Problem (TFP) has recently gained popularity in Operation Research (OR) . The cha...
International audienceIn this review paper, JAYA algorithm, which is a recent population-based algor...
The Jaya algorithm is arguably one of the fastest-emerging metaheuristics amongst the newest members...
Many metaheuristic methods have been proposed to solve engineering problems in literature studies. O...
Optimization problems relate to the problem of finding minimum or maximum values from a large pools ...
International audienceThis study throws the light on two metaheuristic algorithms and enable researc...
To solve optimization problems, in the field of engineering optimization, an optimal value of a spec...
This paper proposes a novel performance enhanced Jaya algorithm with a two group adaption (E-Jaya). ...
Meta-heuristics utilizing numerous parameters are more complicated than meta-heuristics with a coupl...
© 2016 The Authors. Published by Elsevier Ltd. The Team Formation problem (TFP) has become a well-kn...
In this paper, we introduce an education tool for learning metaheuristic algorithms that allows disp...
Several population-based metaheuristic optimization algorithms have been proposed in the last decade...
T-way testing is a sampling strategy that generates a subset of test cases from a pool of possible t...