Heuristics for publishing dynamic content as structured data with schema.org

08/17/2018
by   Elias Kärle, et al.
0

Publishing fast changing dynamic data as open data on the web in a scalable manner is not trivial. So far the only approaches describe publishing as much data as possible, which then leads to problems, like server capacity overload, network latency or unwanted knowledge disclosure. With this paper we show ways how to publish dynamic data in a scalable, meaningful manner by applying context-dependent publication heuristics. The outcome shows that the application of the right publication heuristics in the right domain can improve the publication performance significantly. Good knowledge about the domain help choosing the right publication heuristic and hence lead to very good publication results.

READ FULL TEXT
research
07/31/2020

Copas' method is sensitive to different mechanisms of publication bias

Copas' method corrects a pooled estimate from an aggregated data meta-an...
research
05/10/2018

Learning Robust Search Strategies Using a Bandit-Based Approach

Effective solving of constraint problems often requires choosing good or...
research
10/19/2020

Poincare: Recommending Publication Venues via Treatment Effect Estimation

Choosing a publication venue for an academic paper is a crucial step in ...
research
09/15/2018

Choosing a Knowledge Dissemination Approach

Knowledge management has been described as getting the right knowledge t...
research
02/16/2018

Analysis of Schema.org Usage in the Tourism Domain

Schema.org is an initiative founded in 2011 by the four-big search engin...
research
03/16/2015

GeomRDF: A Geodata Converter with a Fine-Grained Structured Representation of Geometry in the Web

In recent years, with the advent of the web of data, a growing number of...

Please sign up or login with your details

Forgot password? Click here to reset