Reasoning with uncertain information and trust
Murat Sensoy, Geeth De Mel, et al.
SPIE Defense + Security 2013
The presence of numerous and disparate information sources available to support decision-making calls for efficient methods of harnessing their potential. Information sources may be unreliable, and misleading reports can affect decisions. Existing trust and reputation mechanisms typically rely on reports from as many sources as possible to mitigate the influence of misleading reports on decisions. In the real world, however, it is often the case that querying information sources can be costly in terms of energy, bandwidth, delay overheads, and other constraints. We present a model of source selection and fusion in resource-constrained environments, where there is uncertainty regarding the trustworthiness of sources. We exploit diversity among sources to stratify them into homogeneous subgroups to both minimise redundant sampling and mitigate the effect of certain biases. Through controlled experiments, we demonstrate that a diversity-based approach is robust to biases introduced due to dependencies among source reports, performs significantly better than existing approaches when sampling budget is limited and equally as good with an unlimited budget.
Murat Sensoy, Geeth De Mel, et al.
SPIE Defense + Security 2013
Emre Göynügür, Geeth de Mel, et al.
ICAART 2017
Saritha Arunkumar, Mudhakar Srivatsa, et al.
MILCOM 2016
Emre Göynügür, Murat Şensoy, et al.
Big Data 2017