Title :
Representing and learning temporal relationships among experimental variables
Author :
Gopalakrishnan, Vanathi ; Buchanan, Bruce G.
Author_Institution :
Dept. of Comput. Sci., Pittsburgh Univ., PA, USA
Abstract :
The authors describe the necessity to capture temporal information in scientific experiment design for analysis by machine learning algorithms that can learn useful temporal patterns among experimental variables. They have identified three types of temporal information, namely duration, rate of change, and sequence of application of laboratory operators that are useful to learn from experimental data. Their motivation stems from study of experimental design in the domain of macromolecular crystallography. They identify the challenges posed both by the domain as well as the temporal information on machine learning programs, and describe work in progress. They outline the method of temporal specialization for inducing temporal relations between experimental variables, and illustrate with an example from the domain
Keywords :
X-ray crystallography; biology computing; design of experiments; knowledge representation; learning (artificial intelligence); macromolecules; molecular biophysics; temporal reasoning; duration; experimental variables; laboratory operator application sequence; machine learning algorithms; macromolecular crystallography; rate of change; scientific experiment design; temporal information capture; temporal pattern learning; temporal relation induction; temporal relationship learning; temporal relationship representation; Algorithm design and analysis; Computer science; Crystallography; Identity-based encryption; Intelligent systems; Laboratories; Machine learning; Machine learning algorithms; Reactive power; Read only memory;
Conference_Titel :
Temporal Representation and Reasoning, 1998. Proceedings. Fifth International Workshop on
Conference_Location :
Sanibel Island, FL
Print_ISBN :
0-8186-8473-9
DOI :
10.1109/TIME.1998.674144