This dissertation is a contribution to formal and computational philosophy. In the first part, we show that by exploiting the parallels between large, yet finite lotteries on the one hand and countably infinite lotteries on the other, we gain insights in the foundations of probability theory as well as in epistemology. Case 1: Infinite lotteries. We discuss how the concept of a fair finite lottery can best be extended to denumerably infinite lotteries. The solution boils down to the introduction of infinitesimal probability values, which can be achieved using non-standard analysis. Our solution can be generalized to uncountable sample spaces, giving rise to a Non-Archimedean Probability (NAP) theory....
For reasoning about uncertain situations, we have probability theory, and we have logics of knowled...
This talk proposes a logic for reasoning about (multi-agent) epistemic probability models, and for e...
In this article we demonstrate how algorithmic probability theory is applied to situations that inv...
This dissertation is a contribution to formal and computational philosophy. In ...
This dissertation is a contribution to formal and computational philosophy. In ...
This dissertation is a contribution to formal and computational philosophy. In ...
A popular way to relate probabilistic information to binary rational beliefs is the Lockean Thesis, ...
A popular way to relate probabilistic information to binary rational beliefs is the Lockean Thesis, ...
A popular way to relate probabilistic information to binary rational beliefs is the Lockean Thesis, ...
A popular way to relate probabilistic information to binary rational beliefs is the Lockean Thesis, ...
International audienceWe propose a simplified logic for reasoning about (multi-agent) epistemic prob...
International audienceWe propose a simplified logic for reasoning about (multi-agent) epistemic prob...
International audienceWe propose a simplified logic for reasoning about (multi-agent) epistemic prob...
Non-Archimedean probability functions allow us to combine regularity with perfect additivity. We dis...
A popular way to relate probabilistic information to binary rational beliefs is the Lockean Thesis, ...
For reasoning about uncertain situations, we have probability theory, and we have logics of knowled...
This talk proposes a logic for reasoning about (multi-agent) epistemic probability models, and for e...
In this article we demonstrate how algorithmic probability theory is applied to situations that inv...
This dissertation is a contribution to formal and computational philosophy. In ...
This dissertation is a contribution to formal and computational philosophy. In ...
This dissertation is a contribution to formal and computational philosophy. In ...
A popular way to relate probabilistic information to binary rational beliefs is the Lockean Thesis, ...
A popular way to relate probabilistic information to binary rational beliefs is the Lockean Thesis, ...
A popular way to relate probabilistic information to binary rational beliefs is the Lockean Thesis, ...
A popular way to relate probabilistic information to binary rational beliefs is the Lockean Thesis, ...
International audienceWe propose a simplified logic for reasoning about (multi-agent) epistemic prob...
International audienceWe propose a simplified logic for reasoning about (multi-agent) epistemic prob...
International audienceWe propose a simplified logic for reasoning about (multi-agent) epistemic prob...
Non-Archimedean probability functions allow us to combine regularity with perfect additivity. We dis...
A popular way to relate probabilistic information to binary rational beliefs is the Lockean Thesis, ...
For reasoning about uncertain situations, we have probability theory, and we have logics of knowled...
This talk proposes a logic for reasoning about (multi-agent) epistemic probability models, and for e...
In this article we demonstrate how algorithmic probability theory is applied to situations that inv...