Data Mining with Big
Data
ABSTRACT:
Big Data concern large-volume, complex, growing data
sets with multiple, autonomous sources. With the fast development of
networking, data storage, and the data collection capacity, Big Data are now
rapidly expanding in all science and engineering domains, including physical,
biological and biomedical sciences. This paper presents a HACE theorem that
characterizes the features of the Big Data revolution, and proposes a Big Data
processing model, from the data mining perspective. This data-driven model involves
demand-driven aggregation of information sources, mining and analysis, user
interest modeling, and security and privacy considerations. We analyze the
challenging issues in the data-driven model and also in the Big Data
revolution.
EXISTING SYSTEM:
Ø The rise of Big Data applications where data
collection has grown tremen dously and is beyond the ability of commonly used
software tools to capture, manage, and process within a “tolerable elapsed
time.” The most fundamental challenge for Big Data applications is to explore
the large volumes of data and extract useful information or knowledge for
future actions. In many situations, the knowledge extraction process has to be
very efficient and close to real time because storing all observed data is
nearly infeasible.
Ø The unprecedented data volumes require an effective
data analysis and prediction platform to achieve fast response and real-time
classification for such Big Data.
DISADVANTAGES
OF EXISTING SYSTEM:
] The
challenges at Tier I focus on data accessing and arithmetic computing
procedures. Because Big Data are often stored at different locations and data
volumes may continuously grow, an effective computing platform will have to
take distributed large-scale data storage into consideration for computing.
] The
challenges at Tier II center around semantics and domain knowledge for
different Big Data applications. Such information can provide additional
benefits to the mining process, as well as add technical barriers to the Big
Data access (Tier I) and mining algorithms (Tier III).
] At
Tier III, the data mining challenges concentrate on algorithm designs in
tackling the difficulties raised by the Big Data volumes, distributed data
distributions, and by complex and dynamic data characteristics.
PROPOSED SYSTEM:
Ø We propose a HACE theorem to model Big Data
characteristics. The characteristics of HACH make it an extreme challenge for
discovering useful knowledge from the Big Data.
Ø The HACE theorem suggests that the key characteristics
of the Big Data are 1) huge with heterogeneous and diverse data sources, 2)
autonomous with distributed and decentralized control, and 3) complex and
evolving in data and knowledge associations.
Ø To support Big Data mining, high-performance computing
platforms are required, which impose systematic designs to unleash the full
power of the Big Data.
ADVANTAGES
OF PROPOSED SYSTEM:
Provide most relevant and most accurate
social sensing feedback to better understand our society at realtime.
SYSTEM CONFIGURATION:
HARDWARE CONFIGURATION:
] Processor - Pentium
IV
] Speed - 1.1 Ghz
] RAM - 512
MB (min)
] Hard
Disk - 20GB
] Keyboard - Standard
Keyboard
] Mouse - Two
or Three Button Mouse
] Monitor - LCD/LED
Monitor
SOFTWARE CONFIGURATION:
ü Operating
System - Windows XP/7
ü Programming
Language - Java/J2EE
ü Software
Version - JDK 1.7 or above
ü Database - MYSQL
REFERENCE:
Xindong Wu, Fellow, IEEE, Xingquan Zhu, Senior
Member, IEEE, Gong-Qing Wu, and Wei Ding, Senior Member, IEEE, “Data Mining
with Big Data”, IEEE TRANSACTIONS ON
KNOWLEDGE AND DATA ENGINEERING, VOL. 26, NO. 1, JANUARY 2014.
No comments:
Post a Comment