Abstract:
The inference procedure based on the minimization of statistical distances has already proved
to be a very useful tool in the field of robust inference. One of such commonly used divergences
is the Bregman Divergence. Several important divergence families, e.g., the Likelihood Dispar-
ity (LD), the Density Power Divergence (DPD) family, the B-Exponential Divergence (BED)
family etc. can be represented as subfamilies of the class of Bregman divergences. Yet, there are
several other important divergences, e.g., the Power Divergence family, the S-divergence family,
etc., which cannot be represented in the Bregman form. We will try to expand the structure of
the Bregman divergence so that the above mentioned divergences can be accommodated within
the Bregman form with this expanded definition. This we will do by utilizing powers of densities
as arguments, rather than the arguments themselves; this leads to the generalized class of the
extended Bregman divergences which is one step ahead through the modification of existing
popular tools for minimum distance approach used extensively in this literature. Later, using
this extension, we have explored the advantage of its use in the field of estimation by construct-
ing a new divergence family, namely, the Generalized S-Bregman (GSB) family. Similarly, its
contribution in the field of hypotheses testing has also been explored.
But, in spite of such modification, sometimes we are not able to get the ‘best’ results due
to another burning issue – choice of optimal tuning parameter(s). Inappropriate selection of it
can sometimes lead us to dangerous consequences. The emphasis in present times is to find an
‘optimal’ data-based tuning parameter in the estimation process which generates an estimator
which represents the best compromise between robustness and efficiency for the data at hand.
Selecting this tuning parameter “optimally” is a problem of substantial practical interest, which
we have also tried to address through the present work. The DPD has been used as a basic
illustrative tool for this purpose. Here, we have tried to refine the attempts to select the optimal
tuning parameter taken by Warwick and Jones (2005) as well as Hong and Kim (2001). We have
proposed a modified algorithm, namely the Iterated Warwick and Jones (IWJ) algorithm, which
helps us to find highly robust estimates along with reasonable efficiency, after removing the pilot
dependency to a great extent. Several real life data examples have been used to demonstrate
the success of our proposed algorithm. This method can potentially be applied in case of any
robust estimation method which depends on the choice of tuning parameter(s).