Inference is expressed using information and is therefore subject to the limitations of information. The conventions that determine the reliability of inference have developed in information ecosystems under the influence of a range of selection pressures. These conventions embed limitations in information measures like quality, pace and friction caused by selection trade-offs. Some selection pressures improve the reliability of inference; others diminish it by reinforcing the limitations of the conventions. This paper shows how to apply these ideas to inference in order to analyse the limitations; the analysis is applied to various theories of inference including examples from the philosophies of science and mathematics as well as machine ...
The Internet is a huge information database. With this infor-mation it is possible to find inference...
There is a fundamental division between two approaches to cognition and inference in the real world....
Provides the classical foundation of Statistical Learning Theory. Divided into two parts, this book ...
Part 2: Machine LearningInternational audienceThe limitations of Shannon information theory are poin...
Empirical Inference is the process of drawing conclusions from observational data. For instance, the...
This Article develops the concept of a theory of uncertainty as a tool for warranting non-monotoni...
Summary Distributional inference: the limits of reason Science advances by combining rational argume...
Inference under uncertainty plays a crucial role in expert system and receives growing attention fro...
An inference may be defined as a passage of thought according to some method. In the theory of knowl...
This book is unique in that it covers the philosophy of model-based data analysis and an omnibus str...
People rely extensively on inference as a source of information, and sometimes they confuse inferenc...
The Akaike Information Criterion can be a valuable tool of scientific inference. This statistic, or ...
Machine learning is widely regarded as a tool for overcoming the bottleneck in knowledge acquisition...
This paper discusses how real-life statistical analysis/inference deviates from ideal environments. ...
This book presents tools and principles of information theory as a solution to analyse insufficient i...
The Internet is a huge information database. With this infor-mation it is possible to find inference...
There is a fundamental division between two approaches to cognition and inference in the real world....
Provides the classical foundation of Statistical Learning Theory. Divided into two parts, this book ...
Part 2: Machine LearningInternational audienceThe limitations of Shannon information theory are poin...
Empirical Inference is the process of drawing conclusions from observational data. For instance, the...
This Article develops the concept of a theory of uncertainty as a tool for warranting non-monotoni...
Summary Distributional inference: the limits of reason Science advances by combining rational argume...
Inference under uncertainty plays a crucial role in expert system and receives growing attention fro...
An inference may be defined as a passage of thought according to some method. In the theory of knowl...
This book is unique in that it covers the philosophy of model-based data analysis and an omnibus str...
People rely extensively on inference as a source of information, and sometimes they confuse inferenc...
The Akaike Information Criterion can be a valuable tool of scientific inference. This statistic, or ...
Machine learning is widely regarded as a tool for overcoming the bottleneck in knowledge acquisition...
This paper discusses how real-life statistical analysis/inference deviates from ideal environments. ...
This book presents tools and principles of information theory as a solution to analyse insufficient i...
The Internet is a huge information database. With this infor-mation it is possible to find inference...
There is a fundamental division between two approaches to cognition and inference in the real world....
Provides the classical foundation of Statistical Learning Theory. Divided into two parts, this book ...