2,886 research outputs found
On the equivalence of GPD representations
Phenomenological representations of generalized parton distributions (GPDs)
implementing the non-trivial field theoretical requirements are employed in the
present day strategies for extracting of hadron structure information encoded
in GPDs from the observables of hard exclusive reactions. Showing out the
equivalence of various GPD representations can help to get more insight into
GPD properties and allow to build up flexible GPD models capable of
satisfactory description of the whole set of available experimental data. We
review the mathematical aspects of establishing equivalence between the the
double partial wave expansion of GPDs in the conformal partial waves and in the
-channel partial waves and the double distribution
representation of GPDs.Comment: A contribution into the Proceedings of QUARKS-2016 19th International
Seminar on High Energy Physics, Pushkin, Russia, 29 May - 4 June, 201
Price adjustment to news with uncertain precision
Bayesian learning provides the core concept of processing noisy information. In standard Bayesian frameworks, assessing the price impact of information requires perfect knowledge of newsâ precision. In practice, however, precision is rarely dis- closed. Therefore, we extend standard Bayesian learning, suggesting traders infer newsâ precision from magnitudes of surprises and from external sources. We show that interactions of the different precision signals may result in highly nonlinear price responses. Empirical tests based on intra-day T-bond futures price reactions to employment releases confirm the modelâs predictions and show that the effects are statistically and economically significant
Web Service Retrieval by Structured Models
Much of the information available on theWorldWideWeb cannot effectively be found by the help of search engines because the information is dynamically generated on a userâs request.This applies to online decision support services as well as Deep Web information. We present in this paper a retrieval system that uses a variant of structured modeling to describe such information services, and similarity of models for retrieval. The computational complexity of the similarity problem is discussed, and graph algorithms for retrieval on repositories of service descriptions are introduced. We show how bounds for combinatorial optimization problems can provide filter algorithms in a retrieval context. We report about an evaluation of the retrieval system in a classroom experiment and give computational results on a benchmark library.Economics ;
Price Adjustment to News with Uncertain Precision
Bayesian learning provides the core concept of processing noisy information. In standard Bayesian frameworks, assessing the price impact of information requires perfect knowledge of newsâ precision. In practice, however, precision is rarely dis- closed. Therefore, we extend standard Bayesian learning, suggesting traders infer newsâ precision from magnitudes of surprises and from external sources. We show that interactions of the different precision signals may result in highly nonlinear price responses. Empirical tests based on intra-day T-bond futures price reactions to employment releases confirm the modelâs predictions and show that the effects are statistically and economically significant.Bayesian Learning, Macroeconomic Announcements, Information Quality, Precision Signals
- âŚ