smoothers ahead
applying smoothers
best smoothers
smoothers work
using smoothers
new smoothers
smoothers finish
added smoothers
quality smoothers
more smoothers
the data needed smoothing to reveal the underlying trend.
we used moving averages as simple smoothers for the time series.
kernel smoothers provide a more sophisticated approach to data smoothing.
the choice of smoother depends on the data and the desired outcome.
adaptive smoothers adjust their parameters based on the data characteristics.
excessive smoothing can obscure important details in the data.
spline smoothers are often used for creating aesthetically pleasing curves.
regression smoothers can model non-linear relationships in the data.
the smoother's bandwidth significantly impacts the resulting curve.
we compared the performance of different smoothers on the dataset.
local polynomial smoothers are popular for their flexibility.
Explore frequently searched vocabulary
Want to learn vocabulary more efficiently? Download the DictoGo app and enjoy more vocabulary memorization and review features!
Download DictoGo Now