Title
Finding Temporal Relations: Causal Bayesian Networks vs. C4.5
Abstract
Observing the world and finding trends and relations among the variables of interest is an important and common learning activity. In this paper we apply TETRAD, a program that uses Bayesian networks to discover causal rules, and C4.5, which creates decision trees, to the problem of discovering relations among a set of variables in the controlled environment of an Artificial Life simulator. All data in this environment are generated by a single entity over time. The rules in the domain are known, so we are able to assess the effectiveness of each method. The agent's sensings of its environment and its own actions are saved in data records over time. We first compare TETRAD and C4.5 in discovering the relations between variables in a single record. We next attempt to find temporal relations among the variables of consecutive records. Since both these programs disregard the passage of time among the records, we introduce the flattening operation as a way to span time and bring the variables of interest together in a new single record. We observe that flattening allows C4.5 to discover relations among variables over time, while it does not improve TETRAD's output.
Year
DOI
Venue
2000
10.1007/3-540-39963-1_28
ISMIS
Keywords
Field
DocType
flattening operation,new single record,artificial life simulator,single record,bayesian network,finding temporal relations,consecutive record,causal bayesian networks,single entity,span time,controlled environment,data record,artificial life,decision tree
Artificial life,Data mining,Decision tree,Causality,Tetrad,Computer science,Bayesian network,Artificial intelligence,Machine learning,Data records
Conference
ISBN
Citations 
PageRank 
3-540-41094-5
7
1.02
References 
Authors
5
2
Name
Order
Citations
PageRank
Kamran Karimi111817.23
Howard J. Hamilton21501145.55