Knowledge
Extraction by Dynamical Clustering of sea waves streaming data.
Elvira ROMANO, Antonio BALZANELLA, Rosanna VERDE.
La revue MODULAD, numéro 36, Juillet 2007
Abstract:
Data stream can be thought
as a sequence of ordered data items, where the input arrives
more or less continuously as time progress. There exist several
applications producing data stream, e.g. telecommunication
system, stock markets customer click streams etc.
In this paper we consider the problem of extracting knowledge by
a dinamical clustering
algorithm of sea waves streaming data, that is to say evolving
streaming of data coming
from a multisensor system. For this purpose we develop an updating
version of Dynamical
Clustering Algorithm [5]. This problem is very interesting from
a practical point of view.
It is based on the computation of a prototypal wave through a free-knot
smoothing spline,
optimizing a non linear problem. Thanks to this approach, it is
possible to investigate in
which way the incoming data change according to the various steps
of process registration,
and to have a summary description of the entire data thought prototypals
flowing curves using a small amount of memory and
time.
Keywords: data stream, data mining, clustering, sea waves propagation,
free
knots spline.
Download paper: Knowledge
Extraction by Dynamical Clustering of sea waves streaming data
Download slides: Knowledge
Extraction by Dynamical Clustering of sea waves streaming data
|