Factor graphs are a ubiquitous tool for multi-source inference in robotics and multi-sensor networks. They allow for heterogeneous measurements from many sources to be concurrently represented as factors in the state posterior distribution, so that inference can be conducted via sparse graphical methods. Adding measurements from many sources can supply robustness to state estimation, as seen in distributed pose graph optimization. However, adding excessive measurements to a factor graph can also quickly degrade their performance as more cycles are added to the graph. In both situations, the relevant quality is the redundancy of information. Drawing on recent work in information theory on partial information decomposition (PID), we articulate two potential definitions of redundancy in factor graphs, both within a common axiomatic framework for redundancy in factor graphs. This is the first application of PID to factor graphs, and only one of a few presenting quantitative measures of redundancy for them.
翻译:系数图形是机器人和多传感器网络中多源推断的无处不在的工具。 它们允许许多来源的多种测量同时作为国家后方分布中的因素来代表, 以便通过稀少的图形方法进行推断。 从许多来源增加的测量可以提供国家估算的稳健性, 从分布式图形优化中可以看到这一点。 但是, 在系数图形中添加过量的测量也可以随着图形中增加更多的周期而迅速降低其性能。 在这两种情况下,相关的质量是信息的冗余。 根据关于部分信息分解的信息理论(PID)的最新信息理论,我们阐明了要素图形中冗余的两个潜在定义, 两者都是在元素图形冗余的一个共同的不言理框架之内。 这是 PID对要素图形的首次应用, 并且只有少数几个为它们提供了定量冗余量的量度。</s>