Database Reference
In-Depth Information
[SV10] Sieber, H., Volkmer, T.: Ein Konfidenzintervall f¨r den Mehrumsatz bei einem
A-B-Test. (in German) Documentation, prudsys AG, 2010
[The12] Thess, M.: Multilevel preconditioners for temporal-difference learning methods
related to recommendation engines. In: Apel, T., Steinbach, O. (eds.) Advanced
Finite Element Methods and Applications. Springer, Berlin (2012)
[TA99] Tikhonov, A.N., Arsenin, V.A.: Solutions of Ill-Posed Problems. W.H. Winston,
Washington, DC (1977)
[TGK07] Taghipour, N., Ghidary, S.S., Kardan A.: Using q-learning for web recommenda-
tions from web usage data. In: 12th International CSI Computer Conference,
Teheran (2007)
[TOS01] St¨ben, K.: An introduction to algebraic multigrid. In: Trottenberg, U., Oosterlee,
C., Sch¨ ller, A. (eds.) Multigrid, pp. 413-532. Academic Press, San Diego (2001)
[TVR97] Tsitsiklis, J.N., Roy, B.V.: An analysis of temporal-difference learning with function
approximation. IEE Trans. Autom. Control 42(5), 674-690 (1997)
[VB96] Vandenberghe, L., Boyd, S.: Semidefinite programming. SIAM Rev. 38, 49-95
(1996)
[Wah90] Wahba, G.: Spline models for observational data, vol. 59. SIAM, Philadelphia (1990)
[Wie88] Wieland, A.: Spiral data set. http://www.cs.cmu.edu/afs/cs.cmu.edu/project/ai-repos
itory/ai/areas/neural/bench/cmu/0.html.
[Wien48] Wiener, N.: Cybernetics or Control and Communication in the Animal and the
Machine. Hermann & Cie Editeurs/The Technology Press/Wiley, Paris/Cambridge,
MA/New York (1948)
[Wien64] Wiener, N.: God & Golem, Inc. MIT Press, Cambridge (1964)
[Ys86]
Yserentant, H.: On the multi-level splitting of finite element spaces. Numer. Math.
49, 379-412 (1986)
[Zen91]
Zenger, C.: Sparse grids. In: Hackbusch, W. (ed.) Parallel Algorithms for Partial
Differential Equations, Proceedings of the Sixth GAMM Seminar, Kiel, 1990, Vol.
31 of Notes on Num. Fluid Mech., pp. 241-251. Vieweg-Verlag (1991)
[Zim06]
Zimmermann K.-H.: Diskrete Mathematik (in German). Books on Demand,
Norderstedt (2006)
[Ziv04]
Ziv, O.: Algebraic multigrid for reinforcement learning. Master's Thesis, Technion
(2004)
[ZS05]
Ziv, O., Shimkin, N.: Multigrid methods for policy evaluation and reinforcement
learning. In: 2005 International Symposium on Intelligent Control. Limassol,
Cyprus (2005)
[Zu00]
Zumbusch, G.: A sparse grid PDE solver. In: Langtangen, H.P., Bruaset A.M., Quak
E. (eds.) Advances in Software Tools for Scientific Computing, Proceedings
SciTools '98. Lecture Notes in Computational Science and Engineering, vol.
10, chapter 4, pp. 133-178. Springer, Berlin (2000)
[ZWSP08]
Zhou Y., Wilkinson, D., Schreiber, R. Pan, R.: Large-scale Parallel Collaborative
Filtering for the Netflix Prize. In: AAIM '08: Proceedings of the 4th international
conference on Algorithmic Aspects in Information and Management, pp. 337-348,
Springer-Verlag, Berlin, Heidelberg (2008)
Search WWH ::




Custom Search