Advanced Algorithms and Common Solutions to Variational Inequalities
Abstract
:1. Introduction
2. Definition and Necessary Lemmas
- (i)
- monotone if
- (ii)
- pseudomonotone if leads to
- (iii)
- inverse strongly monotone (ism) if there exists such that
- (iv)
- maximal monotone if it is monotone and its graphis not a proper subset of one of any other monotone mapping,
- (v)
- L-Lipschitz continuous if there exists a positive constant L such that
- (vi)
- nonexpansive ifHere, the set is referred to the set of all fixed points of a mapping ℷ.
3. Main Theorems
- (i)
- The projection computed explicitly as in Theorem 1 because is either half-spaces or the whole space ℸ.
- (ii)
- If ℷ is ism mapping, then ℷ is Lipschitz continuous. Thus, for our algorithms can use to solve the CSVIP for the ism mappings .
4. Numerical Experiments
- (1)
- For Van Hieu results in [23] Algorithm 3.1 (Alg. 1) we use
- (2)
- For our proposed algorithms (Alg. 2) we use and
5. Discussion
- (i)
- Figure 1 and Figure 2 and Table 1 demonstrates the behavior of both algorithms as the size of the problem m varies. We can see that the performance of the algorithm depends on the size of the problem. More time and a significant number of iterations are required for large dimensional problems. In this case, we can see that the inertial effect strengthens the efficiency of the algorithm and improves the convergence rate.
- (ii)
- Figure 3 and Table 2 display the behavior of both algorithms while the number of problems N varies. It could be said that the performance of algorithms also depends on the number of problems involved. In this scenario, we can see that roughly the same number of iterations are required, but the execution time depends entirely on the number of problems N.
- (iii)
- (iv)
- Based on the progress of the numerical results, we find that our methods are effective and successful in finding solutions for VIP and our algorithms converges faster than the algorithms of Hieu [19].
6. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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N | m | Algorithm 1 | Algorithm 2 | ||
---|---|---|---|---|---|
Number of Iter. | CPU (s) | Number of Iter. | CPU (s) | ||
20 | 2 | 269 | 43.01771 | 185 | 28.6043 |
20 | 5 | 788 | 121.0213 | 529 | 83.1379 |
20 | 10 | 2493 | 391.9032 | 1066 | 245.6833 |
20 | 20 | 7780 | 765.5070 | 3038 | 485.9237 |
N | m | Algorithm 1 | Algorithm 2 | ||
---|---|---|---|---|---|
Number of Iter. | CPU (s) | Number of Iter. | CPU (s) | ||
5 | 10 | 3101 | 172.4298 | 2267 | 105.7254 |
10 | 10 | 3009 | 233.6499 | 2340 | 159.1928 |
15 | 10 | 3254 | 353.0176 | 2109 | 235.8372 |
N | TOL | Algorithm 1 | Algorithm 2 | ||
---|---|---|---|---|---|
Number of Iter. | CPU (s) | Number of Iter. | CPU (s) | ||
2 | 10−2 | 161 | 0.1799 | 118 | 0.1483 |
2 | 10−3 | 208 | 0.3563 | 150 | 0.1985 |
2 | 10−4 | 5801 | 6.0405 | 4863 | 4.4441 |
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Hammad, H.A.; ur Rehman, H.; De la Sen, M. Advanced Algorithms and Common Solutions to Variational Inequalities. Symmetry 2020, 12, 1198. https://doi.org/10.3390/sym12071198
Hammad HA, ur Rehman H, De la Sen M. Advanced Algorithms and Common Solutions to Variational Inequalities. Symmetry. 2020; 12(7):1198. https://doi.org/10.3390/sym12071198
Chicago/Turabian StyleHammad, Hasanen A., Habib ur Rehman, and Manuel De la Sen. 2020. "Advanced Algorithms and Common Solutions to Variational Inequalities" Symmetry 12, no. 7: 1198. https://doi.org/10.3390/sym12071198
APA StyleHammad, H. A., ur Rehman, H., & De la Sen, M. (2020). Advanced Algorithms and Common Solutions to Variational Inequalities. Symmetry, 12(7), 1198. https://doi.org/10.3390/sym12071198