Predictive accuracy, as an estimation of a classifier’s future performance, has been studied for at least seventy years. With the advent of the modern computer era, techniques that may have been previously impractical are now calculable within a reasonable time frame. Within this chapter, three techniques of resampling, namely, leave-one-out, k-fold cross validation and bootstrapping; are investigated as methods of error rate estimation with application to variable precision rough set theory (VPRS). A prototype expert system is utilised to explore the nature of each resampling technique when VPRS is applied to an example dataset. The software produces a series of graphs and descriptive statistics, which are used to illustrate the characteri...
Since the seminal work of Pawlak (International Journal of Information and Computer Science, 11 (198...
Since the seminal work of Pawlak (International Journal of Information and Computer Science, 11 (198...
Since the seminal work of Pawlak (International Journal of Information and Computer Science, 11 (198...
Predictive accuracy, as an estimation of a classifier’s future performance, has been studied for at ...
Predictive accuracy, as an estimation of a classifier’s future performance, has been studied for at ...
Predictive accuracy, as an estimation of a classifier’s future performance, has been studied for at ...
The Variable Precision Rough Sets Model (VPRS) is an extension of the original Rough Set Theory. To ...
The Variable Precision Rough Sets Model (VPRS) is an extension of the original Rough Set Theory. To ...
The Variable Precision Rough Sets Model (VPRS) is an extension of the original Rough Set Theory. To ...
The variable precision rough sets model (VPRS) is a development of the original rough set theory (RS...
The variable precision rough sets model (VPRS) is a development of the original rough set theory (RS...
The variable precision rough sets model (VPRS) is a development of the original rough set theory (RS...
This dissertation considers, the Variable Precision Rough Sets (VPRS) model, and its development wit...
This dissertation considers, the Variable Precision Rough Sets (VPRS) model, and its development wit...
This dissertation considers, the Variable Precision Rough Sets (VPRS) model, and its development wit...
Since the seminal work of Pawlak (International Journal of Information and Computer Science, 11 (198...
Since the seminal work of Pawlak (International Journal of Information and Computer Science, 11 (198...
Since the seminal work of Pawlak (International Journal of Information and Computer Science, 11 (198...
Predictive accuracy, as an estimation of a classifier’s future performance, has been studied for at ...
Predictive accuracy, as an estimation of a classifier’s future performance, has been studied for at ...
Predictive accuracy, as an estimation of a classifier’s future performance, has been studied for at ...
The Variable Precision Rough Sets Model (VPRS) is an extension of the original Rough Set Theory. To ...
The Variable Precision Rough Sets Model (VPRS) is an extension of the original Rough Set Theory. To ...
The Variable Precision Rough Sets Model (VPRS) is an extension of the original Rough Set Theory. To ...
The variable precision rough sets model (VPRS) is a development of the original rough set theory (RS...
The variable precision rough sets model (VPRS) is a development of the original rough set theory (RS...
The variable precision rough sets model (VPRS) is a development of the original rough set theory (RS...
This dissertation considers, the Variable Precision Rough Sets (VPRS) model, and its development wit...
This dissertation considers, the Variable Precision Rough Sets (VPRS) model, and its development wit...
This dissertation considers, the Variable Precision Rough Sets (VPRS) model, and its development wit...
Since the seminal work of Pawlak (International Journal of Information and Computer Science, 11 (198...
Since the seminal work of Pawlak (International Journal of Information and Computer Science, 11 (198...
Since the seminal work of Pawlak (International Journal of Information and Computer Science, 11 (198...