APS March Meeting 2015
Volume 60, Number 1
Monday–Friday, March 2–6, 2015;
San Antonio, Texas
Session M3: Invited Session: Artificial Intelligence: Existential Risk or Boon to Humanity
11:15 AM–1:39 PM,
Wednesday, March 4, 2015
Room: 002AB
Sponsoring
Units:
FPS DCOMP
Chair: Arian Pregenzer, Sandia National Laboratories (Retired)
Abstract ID: BAPS.2015.MAR.M3.2
Abstract: M3.00002 : Cognitive Computing: From Breakthroughs in the Lab to Applications in the Field
11:51 AM–12:27 PM
Preview Abstract
Abstract
Author:
Guruduth Banavar
(IBM TJ Watson Research Center)
In the last decade, the availability of massive amounts of new data, and the
development of new machine learning technologies, have augmented reasoning
systems to give rise to a new class of computing systems. These ``Cognitive
Systems'' learn from data, reason from models, and interact naturally with
us, to perform complex tasks better than either humans or machines can do by
themselves. In essence, cognitive systems help us penetrate the complexity
of big data, reason using rich models, and enable each of us to perform like
the best. We believe this will transform every industry for the better.
Artificial Intelligence (AI) has a rich history, dating back to 1950's. The
desire to build a Turing machine that would imitate a human dominated the
psyche of the AI researchers for many decades [1]. The complex reality of
human beings and the limitations of early symbolic approaches narrowed the
success of early AI technology to a few specialized and small-scale
applications [2, 3].
Over the last decade, new kinds of unstructured data from social networks,
streaming data, and online publications, as well as massive data emitted
from sensors from the physical world have outpaced traditional forms of
structured data. This will continue to grow exponentially. The insights
embedded in this massive amount of data can provide unprecedented
opportunities for business and social value. Data has indeed become one of
our most precious resources, and with its accelerated pace of evolution, it
will determine the future trajectory of business and society [4].
New tools are being developed to extract insights out of the big data, which
is abundant, unstructured, noisy, and unreliable. These tools have not
relied on the same techniques that helped us exploit clean, structured data
of the past, using small-scale models of the world and explicitly specified
reasoning mechanisms. The new tools are using more automated statistical
pattern-matching techniques, called machine learning, that have come of age
in the last decade [ref]. In addition to reasoning from explicitly specified
models of the world, these new machine learning techniques have given rise
to a new class of systems that effectively learn from patterns in big data,
and simultaneously augment their world models. Such systems can also
interact naturally with us, on human terms, through natural language (i.e.,
unstructured text data), speech (i.e., unstructured audio data), vision
(i.e., unstructured video data), and other modalities.
We call this emerging class of systems that reason, learn, and interact
naturally with us ``Cognitive Systems''. IBM's Watson is a family of
cognitive systems targeted to a variety of domains. The first Watson system
was capable of answering factoid questions as effectively as the best
professionals in that field (as demonstrated by the Jeopardy! exhibition
match, see illustration). Follow-on systems answer other types of questions,
e.g., those that require passage answers, as well as other domains, e.g.,
healthcare, insurance, and education. Yet other cognitive systems in the
Watson family go beyond question answering to support discovery of insights
hidden in big data, such as in huge repositories of scientific literature,
reasoning with evidence to support or refute topics of discussion, and to go
beyond textual data to images and videos.
To cite this abstract, use the following reference: http://meetings.aps.org/link/BAPS.2015.MAR.M3.2