Title
Subjective Bayesian Networks and Human-in-the-Loop Situational Understanding.
Abstract
In this paper we present a methodology to exploit human-machine coalitions for situational understanding. Situational understanding refers to the ability to relate relevant information and form logical conclusions, as well as identify gaps in information. This process for comprehension of the meaning information requires the ability to reason inductively, for which we will exploit the machines’ ability to ‘learn’ from data. However, important phenomena are often rare in occurrence with high degrees of uncertainty, thus severely limiting the availability of instance data for training, and hence the applicability of many machine learning approaches. Therefore, we present the benefits of Subjective Bayesian Networks—i.e., Bayesian Networks with imprecise probabilities—for situational understanding, and the role of conversational interfaces for supporting decision makers in the evolution of situational understanding.
Year
Venue
Field
2017
GKR
Computer science,Exploit,Bayesian network,Situational ethics,Artificial intelligence,Human-in-the-loop,Comprehension,Machine learning,Limiting,Bayesian probability
DocType
Citations 
PageRank 
Conference
0
0.34
References 
Authors
10
8
Name
Order
Citations
PageRank
Dave Braines16111.18
Anna Thomas200.34
Lance M. Kaplan376981.55
Murat Sensoy424928.97
Jonathan Z. Bakdash500.68
Magdalena Ivanovska693.60
Alun D. Preece7974112.50
Federico Cerutti823331.66