PRODUCT ASPECT RANKING AND ITS
APPLICATIONS
ABSTRACT:
Numerous
consumer reviews of products are now available on the Internet. Consumer
reviews contain rich and valuable knowledge for both firms and users. However, the
reviews are often disorganized, leading to difficulties in information
navigation and knowledge acquisition. This article proposes a product aspect
ranking framework, which automatically identifies the important aspects of
products from online consumer reviews, aiming at improving the usability of the
numerous reviews. The important product aspects are identified based on two
observations: (a) the important aspects are usually commented by a large number
of consumers; and (b) consumer opinions on the important aspects greatly
influence their overall opinions on the product. In particular, given the
consumer reviews of a product, we first identify product aspects by a shallow
dependency parser and determine consumer opinions on these aspects via a
sentiment classifier. We then develop a probabilistic aspect ranking algorithm
to infer the importance of aspects by simultaneously considering aspect
frequency and the influence of consumer opinions given to each aspect over
their overall opinions. The experimental results on a review corpus of 21
popular products in eight domains demonstrate the effectiveness of the proposed
approach. Moreover, we apply product aspect ranking to two real-world
applications, i.e., document-level sentiment classification and extractive
review summarization, and achieve significant performance improvements, which demonstrate
the capacity of product aspect ranking in facilitating real-world applications.
EXISTING SYSTEM:
Generally,
a product may have hundreds of aspects. For example, iPhone 3GS has more
than three hundred aspects (see Fig. 1), such as “usability,” “design,” “application,” “3G network.” We argue that some
aspects are more important than the others, and have greater impact on the
eventual consumers’
decision making as well as firms’ product development strategies. For
example, some aspects of iPhone 3GS, e.g., “usability” and “battery,” are concerned by most
consumers, and are more important than the others such as “usb” and “button.” For a camera product, the
aspects such as “lenses” and “picture quality” would greatly
influence consumer opinions on the camera, and they are more important than the
aspects such as “a/v
cable”
and “wrist
strap.”
Hence, identifying important product aspects will improve the usability of
numerous reviews and is beneficial to both consumers and firms. Consumers can
conveniently make wise purchasing decision by paying more attentions to the
important aspects, while firms can focus on improving the quality of these
aspects and thus enhance product reputation effectively.
DISADVANTAGES OF
EXISTING SYSTEM:
v Identifying
aspects in the free text reviews, a straightforward solution is to employ an existing
aspect identification approach.
v The
network lifetime may even be reduced.
v They
do not necessarily minimize the energy consumption for E2E packet traversal.
PROPOSED
SYSTEM:
We
in this paper propose a product aspect ranking framework to automatically identify
the important aspects of products from online consumer reviews. Our assumption
is that the important aspects of a product possess the following
characteristics: (a) they are frequently commented in consumer reviews; and (b)
consumers’
opinions on these aspects greatly influence their overall opinions on the
product. A straightforward frequency-based solution is to regard the aspects that
are frequently commented in consumer reviews as important. However, consumers’ opinions on the
frequent aspects may not influence their overall opinions on the product, and
would not influence their purchasing decisions.
ADVANTAGES OF PROPOSED SYSTEM:
v
It first identifies the nouns and noun
phrases in the documents. The occurrence frequencies of the nouns and noun
phrases are counted, and only the frequent ones are kept as aspects.
v
The language model was built on product
reviews, and used to predict the related scores of the candidate aspects. The
candidates with low scores were then filtered out.
SYSTEM ARCHITECTURE:
SYSTEM CONFIGURATION:-
HARDWARE REQUIREMENTS:-
Processor - Pentium –IV
Speed - 1.1 Ghz
RAM - 512 MB(min)
Hard Disk - 40 GB
Key Board - Standard Windows Keyboard
Mouse - Two or Three Button Mouse
Monitor - LCD/LED
SOFTWARE
REQUIREMENTS:
Operating
system : Windows XP.
Coding
Language : .Net
Data
Base : SQL Server 2005
Tool : VISUAL STUDIO 2008.
REFERENCE:
Zheng-Jun
Zha Member, IEEE Jianxing Yu, Meng Wang and Tat-Seng Chua, “Product Aspect Ranking and Its Applications”
IEEE TRANSACTIONS ON MOBILE COMPUTING, VOL. 26, NO. 5, MAY 2014
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