Your English writing platform
Discover LudwigExact(2)
BioHEL is a rule based machine learning method which has been used for sample classification in highly dimensional datasets because of its fine-grained embedded feature selection [ 14].
Digital media reporting offers tremendous potential to contribute to existing datasets because of its automated ability to scrape news sources for alerts and provide real-time driver data.
Similar(58)
It was detectable in the CORG footprint dataset because of its location upstream of a conserved putative gene C14orf87 with unknown function.
Only 100 bootstrap resamplings were performed on this dataset because of its large size (354 homeodomains).
Although MDR has a simple structure and fast computation, it is hard to find high-order interactions in large-scaled dataset because of its exhaustive searching scheme.
For both 2005 and 2004 analyses, we used the U.S. Census American Community Survey (ACS) 1-year measures as the primary dataset because of its consistency with our analysis year.
Rosetta dataset obtained generally better results than Stanford dataset, probably because of its relatively larger sample size and less diverse clinical background of patients.
Summary statistics are presented in table 1. Age was not significantly associated with CVD in this dataset, probably because of its small variability (most men were aged very close to 71 years).
If it is unwilling to grant open access to its datasets because of safety or security concerns, then that would suggest an undue level of trust in those researchers it does approve and sends a clear message that even it does not believe in the ability of its current measures to adequately safeguard user data.
The related SPE method is in its current form less effective for processing very large datasets because of the challenges involved in implementing a parallelized version of this algorithm.
So on practical and pragmatic grounds, we felt it was appropriate to use such datasets because of their familiar nature and the analysis was easy to understand and interpret.
Write better and faster with AI suggestions while staying true to your unique style.
Since I tried Ludwig back in 2017, I have been constantly using it in both editing and translation. Ever since, I suggest it to my translators at ProSciEditing.

Justyna Jupowicz-Kozak
CEO of Professional Science Editing for Scientists @ prosciediting.com