Abstract
It
is common that the objects in a spatial database (e.g., restaurants/hotels) are
associated with keyword(s) to indicate their businesses/services/features. An
interesting problem known as Closest Keywords search is to query objects,
called keyword cover, which together cover a set of query keywords and have the
minimum inter-objects distance. In recent years, we observe the increasing
availability and importance of keyword rating in object evaluation for the
better decision making. This motivates us to investigate a generic version of
Closest Keywords search called Best Keyword Cover which considers inter-objects
distance as well as the keyword rating of objects. The baseline algorithm is
inspired by the methods of Closest Keywords search which is based on
exhaustively combining objects from different query keywords to generate
candidate keyword covers. When the number of query keywords increases, the
performance of the baseline algorithm drops dramatically as a result of massive
candidate keyword covers generated. To attack this drawback, this work proposes
a much more scalable algorithm called keyword nearest neighbor expansion
(keyword-NNE). Compared to the baseline algorithm, keyword-NNE algorithm
significantly reduces the number of candidate keyword covers generated. The
in-depth analysis and extensive experiments on real data sets have justified
the superiority of our keyword-NNE algorithm.
Aim
The main aim is to
reduce the number of candidate keyword covers generated in a spatial database.
Scope
The scope of this
project is to generate much scalable algorithm called keyword nearest neighbor
expansion NNE reduce the number of candidate keyword covers generated.
Existing
System
The existing works are
to focus on retrieving individual objects by specifying a query consisting of a
query location and a set of query keywords and to retrieve multiple objects
which together cover all query keywords.
Disadvantages
When the number of
query keywords increases, the performance of the baseline algorithm drops
dramatically as a result of massive candidate keyword covers generated.
Proposed
System
This
project proposes to find a number of individual objects, each of which is close
to a query location and the associated keywords (or called document) are very
relevant to a set of query keywords and also it proposes a much more scalable
algorithm called keyword nearest neighbor expansion (keyword-NNE).
Advantages
The
baseline algorithm generates a large number of candidate keyword covers which
leads to dramatic performance drop when more query keywords are given. The
proposed keyword-NNE algorithm applies a different processing strategy, i.e.,
searching local best solution for each object in a certain query keyword. As a
consequence, the number of candidate keyword covers generated is significantly
reduced. The analysis reveals that the number of candidate keyword covers which
need to be further processed in keyword-NNE algorithm is optimal and processing
each keyword candidate cover typically generates much less new candidate
keyword covers in keyword-NNE algorithm than in the baseline algorithm.
System
Architecture
SYSTEM CONFIGURATION
HARDWARE REQUIREMENTS:-
· Processor - Pentium –III
· Speed - 1.1 Ghz
· RAM - 256 MB(min)
· Hard Disk - 20 GB
· Floppy Drive - 1.44 MB
· Key Board - Standard
Windows Keyboard
· Mouse - Two or Three Button Mouse
· Monitor - SVGA
SOFTWARE REQUIREMENTS:-
·
Operating
System : Windows 7
·
Front
End :
JSP AND SERVLET
·
Database :
MYSQL
References
Xin
Li, Jiaheng Lu, Xiaofang Zhou “BEST KEYWORD COVER SEARCH” Knowledge and Data
Engineering, IEEE Transactions on
(Volume:27 , Issue: 1 ) May 2014
I want a project on 'best keyword cover search'.If anyone have this project then please contact me on 'sweetamu1991@gmail.com'
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