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Partial Orders for Uncertainty, Causality, and Decision Making: General Properties, Operations, and Algorithms Francisco Zapata
Partial Orders for Uncertainty, Causality, and Decision Making: General Properties, Operations, and Algorithms
Francisco Zapata
One of the main objectives of science and engineering is to help people select the most beneficial decisions. To make these decisions, we must know people's preferences, and we must have information about different possible consequences of the decisions. Since information is never absolutely accurate and precise, we must also have information about the degree of certainty of every piece of information. All these types of information naturally lead to partial orders: for preferences, a b means that b is preferable to a. This relation is used in decision theory. For events, a b means that a can influence b. This causality relation is one of the fundamental notions of physics, especially of physics of space-time. For uncertain statements, a b means that a is less certain than b. This relation is used in logics describing uncertainty, such as fuzzy logic. This research has revealed that some ideas are common in all three applications of partial orders. In this book, we analyze general properties, operations, and algorithms related to partial orders for representing uncertainty, causality, and decision making, with a special emphasis on uncertainty.
| Mediji | Grāmatas Paperback Book (Grāmata ar mīksto vāku un līmēto muguru) |
| Izlaists | 2014. gada 24. janvāris |
| ISBN13 | 9783659471650 |
| Izdevēji | LAP LAMBERT Academic Publishing |
| Lapas | 236 |
| Izmēri | 150 × 14 × 226 mm · 369 g |
| Valoda | Vācu |
Skatīt visus Francisco Zapata ( piem., Paperback Book )