Examples of Bayesian network in the following topics:
-
- Model potential decision alternatives through utilizing pro/con analysis, influence diagrams, decision trees and Bayesian networks
-
- This is known as Bayesian inference, which is fundamental to Bayesian statistics.
- Bayes' rule is widely used in statistics, science and engineering, such as in: model selection, probabilistic expert systems based on Bayes' networks, statistical proof in legal proceedings, email spam filters, etc.
- Bayesian updating is an important technique throughout statistics, and especially in mathematical statistics.
- Bayesian updating is especially important in the dynamic analysis of a sequence of data.
- This procedure is termed Bayesian updating.
-
- Bayesian inference provides further answers in the form of credible intervals.
- Ostensibly, the Bayesian approach offers intervals that (subject to acceptance of an interpretation of "probability" as Bayesian probability) offer the interpretation that the specific interval calculated from a given dataset has a certain probability of including the true value (conditional on the data and other information available).
-
- A storage area network (SAN) is a dedicated network that provides access to consolidated, block level data storage.
- A campus area network (CAN) is a computer network made up of an interconnection of LANs within a limited geographical area.
- A backbone network is part of a computer network infrastructure that interconnects various pieces of network, providing a path for the exchange of information between different LANs or subnetworks.
- Network performance management, including network congestion, are critical parameters taken into account when designing a network backbone.
- Backbone networks are similar to enterprise private networks.
-
- Routing is the process of selecting paths in a network along which to send network traffic.
- Routing is the process of selecting paths in a network along which to send network traffic.
- Routing is performed for many kinds of networks, including the telephone network (circuit switching), electronic data networks (such as the internet), and transportation networks.
- A transport network, (or transportation network in American English), is typically a network of roads, streets, pipes, aqueducts, power lines, or nearly any structure which permits either vehicular movement or flow of some commodity.
- A transport network may combine different modes of transport.
-
-
- Facebook is an example of a large social network.
- Social networks are composed of nodes and ties.
- Smaller, tighter networks composed of strong ties behave differently than larger, looser networks of weak ties.
- The study of social networks is called either social network analysis or social network theory.
- Assess the role of social networks in the socialization of people
-
- A prediction interval bears the same relationship to a future observation that a frequentist confidence interval or Bayesian credible interval bears to an unobservable population parameter.
- Alternatively, in Bayesian terms, a prediction interval can be described as a credible interval for the variable itself, rather than for a parameter of the distribution thereof.
-
- The network analyst tends to see individual people nested within networks of face-to-face relations with other persons.
- Often these networks of interpersonal relations become "social facts" and take on a life of their own.
- A family, for example, is a network of close relations among a set of people.
- Most social network analysts think of individual persons as being embedded in networks that are embedded in networks that are embedded in networks.
- In chapter 17, we'll take a look at some methods for multi-mode networks.
-
- Network models are based on the concept of connectionism.
- There are several types of network models in memory research.
- Some define the fundamental network unit as a piece of information.
- However, network models generally agree that memory is stored in neural networks and is strengthened or weakened based on the connections between neurons.
- PDP posits that memory is made up of neural networks that interact to store information.