Design of Activation Functions for Inference of Fuzzy Cognitive Maps: Application to Clinical Decision Making in Diagnosis of Pulmonary Infection / 대한의료정보학회지
Healthcare Informatics Research
;
: 105-114, 2012.
Article
in English
| WPRIM
| ID: wpr-141277
ABSTRACT
OBJECTIVES:
Fuzzy cognitive maps (FCMs) representing causal knowledge of relationships between medical concepts have been used as prediction tools for clinical decision making. Activation functions used for inferences of FCMs are very important factors in helping physicians make correct decision. Therefore, in order to increase the visibility of inference results, we propose a method for designing certain types of activation functions by considering the characteristics of FCMs.METHODS:
The activation functions, such as the sinusoidal-type function and linear function, are designed by calculating the domain range of the functions to be reached during the inference process of FCMs. Moreover, the designed activation functions were applied to the decision making process with the inference of an FCM model representing the causal knowledge of pulmonary infections.RESULTS:
Even though sinusoidal-type functions oscillate and linear functions monotonously increase within the entire range of the domain, the designed activation functions make the inference stable because the proposed method notices where the function is used in the inference. And, the designed functions provide more visible numeric results than do other functions.CONCLUSIONS:
Comparing inference results derived using activation functions designed with the proposed method and results derived using activation functions designed with the existing method, we confirmed that the proposed method could be more appropriately used for designing activation functions for the inference process of an FCM for clinical decision making.
Full text:
Available
Index:
WPRIM (Western Pacific)
Main subject:
Artificial Intelligence
/
Decision Making
Type of study:
Diagnostic study
/
Prognostic study
Language:
English
Journal:
Healthcare Informatics Research
Year:
2012
Type:
Article
Similar
MEDLINE
...
LILACS
LIS