dc.description.abstract |
In well-planed experimental work,situation may arise where some observations are lost or
destroyed or unavailable due certain reasons that arc beyond the control of the
experimenter. Unavailability of the observations destroys the orthogonality and the
balance of the design and also affects the inference. The purpose of this study is to assess
the consequences of missing any combination of m observations (three in our case) of
factorial, axial and centre points.
The intensity of the consequences depends upon the size and type of the design.
Generally smaller designs are more affected by the missing observations. We emphasized
on various types of Central Composite Designs (CCDs) which includes Cuboidal,
Spherical, Orthogonal, Rotatable, Minimum Variance, Box and Draper Outlier Robust
Designs with an intention to introduce CCDs robust to in missing observations.
It is observed that different relations occur between different combinations of three
missing observations of factorial, axial and centre points and the determinant of the
reduced information matrix{X'Xr), the main contributor in the definition of the loss of
missing observation. This loss also depends the distance of the axial point from the
center ol'the experiment (a), number of factors ( k ) and the position of the missing point.
A complete sensitivity analysis is conducted by comparing the losses against all possible
combinations of missing observations for a variety of a and k values, 1 .0 < a < 3.0; 2 < k
< 0. These losses fall in predetermined groups of combinations producing same losses
with a predictable frequency. I'or each configuration designs robust to one, two and three
missing observations arc developed under the mininiaxloss criterion and are termed as
minimaxlossl . minimaxloss2 and minimaxloss3 respectively. The minimaxloss3 design
for each k value are compared w-ith other CCD counterparts.
If the loss of missing in observations approaches one, the design breaks down. To avoid
this breakdown and as a precautionary measure certain influential points in the design are
additionally replicated when there are higher chances of loosing them. The replication of
factorial or axial points depends on the values of a and k. It not only refrain the design
from breaking down but helps in improving the efficiency of the design by reducing the
loss. |
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