SlideShare a Scribd company logo
1.
#13/ 19, 1st Floor, Municipal Colony, Kangayanellore Road, Gandhi Nagar, vellore – 6.
Off:0416-2247353 / 6066663 Mo: +91 9500218218 /8870603602,
Project Titles: http://shakastech.weebly.com/2015-2016-titles
Website: www.shakastech.com, Email - id: shakastech@gmail.com, info@shakastech.com
CO-EXTRACTING OPINION TARGETS AND OPINION WORDS FROM ONLINE
REVIEWS BASED ON THE WORD ALIGNMENT MODEL
ABSTRACT:
Mining opinion targets and opinion words from online reviews are important tasks for
fine-grained opinion mining, the key component of which involves detecting opinion relations
among words. To this end, this paper proposes a novel approach based on the partially-
supervised alignment model, which regards identifying opinion relations as an alignment
process. Then, a graph-based co-ranking algorithm is exploited to estimate the confidence of
each candidate. Finally, candidates with higher confidence are extracted as opinion targets or
opinion words. Compared to previous methods based on the nearest-neighbor rules, our model
captures opinion relations more precisely, especially for long-span relations. Compared to
syntax-based methods, our word alignment model effectively alleviates the negative effects of
parsing errors when dealing with informal online texts. In particular, compared to the traditional
unsupervised alignment model, the proposed model obtains better precision because of the usage
of partial supervision. In addition, when estimating candidate confidence, we penalize higher-
degree vertices in our graph-based co-ranking algorithm to decrease the probability of error
generation. Our experimental results on three corpora with different sizes and languages show
that our approach effectively outperforms state-of the-art methods.
1.
#13/ 19, 1st Floor, Municipal Colony, Kangayanellore Road, Gandhi Nagar, vellore – 6.
Off:0416-2247353 / 6066663 Mo: +91 9500218218 /8870603602,
Project Titles: http://shakastech.weebly.com/2015-2016-titles
Website: www.shakastech.com, Email - id: shakastech@gmail.com, info@shakastech.com
EXISTING SYSTEM:
An opinion target is defined as the object about which users express their opinions,
typically as nouns or noun phrases. In the above example, “screen” and “LCD resolution” are
two opinion targets. Previous methods have usually generated an opinion target list from online
product reviews. As a result, opinion targets usually are product features or attributes. In
addition, opinion words are the words that are used to express users’ opinions. In the above
example, “colorful”, “big” and “disappointing” are three opinion words. Constructing an opinion
words lexicon is also important because the lexicon is beneficial for identifying opinion
expressions.
PROPOSED SYSTEM:
Previous work generally adopted a collective extraction strategy. The intuition
represented by this strategy was that in sentences, opinion words usually co-occur with opinion
targets, and there are strong modification relations and associations among them (which in this
paper are called opinion relations or opinion associations). In previous methods, mining the
opinion relations between opinion targets and opinion words was the key to collective extraction.
To this end, the most-adopted techniques have been nearest-neighbor rules and syntactic
patterns.
1.
#13/ 19, 1st Floor, Municipal Colony, Kangayanellore Road, Gandhi Nagar, vellore – 6.
Off:0416-2247353 / 6066663 Mo: +91 9500218218 /8870603602,
Project Titles: http://shakastech.weebly.com/2015-2016-titles
Website: www.shakastech.com, Email - id: shakastech@gmail.com, info@shakastech.com
HARDWARE REQUIREMENTS:
• System : Pentium IV 2.4 GHz.
• Hard Disk : 40 GB.
• Floppy Drive : 1.44 Mb.
• Monitor : 15 VGA Colour.
• Mouse : Logitech.
• RAM : 256 Mb.
SOFTWARE REQUIREMENTS:
• Operating system : - Windows XP.
• Front End : - JSP
• Back End : - SQL Server

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Co extracting opinion targets and opinion words from online r

  • 1. 1. #13/ 19, 1st Floor, Municipal Colony, Kangayanellore Road, Gandhi Nagar, vellore – 6. Off:0416-2247353 / 6066663 Mo: +91 9500218218 /8870603602, Project Titles: http://shakastech.weebly.com/2015-2016-titles Website: www.shakastech.com, Email - id: shakastech@gmail.com, info@shakastech.com CO-EXTRACTING OPINION TARGETS AND OPINION WORDS FROM ONLINE REVIEWS BASED ON THE WORD ALIGNMENT MODEL ABSTRACT: Mining opinion targets and opinion words from online reviews are important tasks for fine-grained opinion mining, the key component of which involves detecting opinion relations among words. To this end, this paper proposes a novel approach based on the partially- supervised alignment model, which regards identifying opinion relations as an alignment process. Then, a graph-based co-ranking algorithm is exploited to estimate the confidence of each candidate. Finally, candidates with higher confidence are extracted as opinion targets or opinion words. Compared to previous methods based on the nearest-neighbor rules, our model captures opinion relations more precisely, especially for long-span relations. Compared to syntax-based methods, our word alignment model effectively alleviates the negative effects of parsing errors when dealing with informal online texts. In particular, compared to the traditional unsupervised alignment model, the proposed model obtains better precision because of the usage of partial supervision. In addition, when estimating candidate confidence, we penalize higher- degree vertices in our graph-based co-ranking algorithm to decrease the probability of error generation. Our experimental results on three corpora with different sizes and languages show that our approach effectively outperforms state-of the-art methods.
  • 2. 1. #13/ 19, 1st Floor, Municipal Colony, Kangayanellore Road, Gandhi Nagar, vellore – 6. Off:0416-2247353 / 6066663 Mo: +91 9500218218 /8870603602, Project Titles: http://shakastech.weebly.com/2015-2016-titles Website: www.shakastech.com, Email - id: shakastech@gmail.com, info@shakastech.com EXISTING SYSTEM: An opinion target is defined as the object about which users express their opinions, typically as nouns or noun phrases. In the above example, “screen” and “LCD resolution” are two opinion targets. Previous methods have usually generated an opinion target list from online product reviews. As a result, opinion targets usually are product features or attributes. In addition, opinion words are the words that are used to express users’ opinions. In the above example, “colorful”, “big” and “disappointing” are three opinion words. Constructing an opinion words lexicon is also important because the lexicon is beneficial for identifying opinion expressions. PROPOSED SYSTEM: Previous work generally adopted a collective extraction strategy. The intuition represented by this strategy was that in sentences, opinion words usually co-occur with opinion targets, and there are strong modification relations and associations among them (which in this paper are called opinion relations or opinion associations). In previous methods, mining the opinion relations between opinion targets and opinion words was the key to collective extraction. To this end, the most-adopted techniques have been nearest-neighbor rules and syntactic patterns.
  • 3. 1. #13/ 19, 1st Floor, Municipal Colony, Kangayanellore Road, Gandhi Nagar, vellore – 6. Off:0416-2247353 / 6066663 Mo: +91 9500218218 /8870603602, Project Titles: http://shakastech.weebly.com/2015-2016-titles Website: www.shakastech.com, Email - id: shakastech@gmail.com, info@shakastech.com HARDWARE REQUIREMENTS: • System : Pentium IV 2.4 GHz. • Hard Disk : 40 GB. • Floppy Drive : 1.44 Mb. • Monitor : 15 VGA Colour. • Mouse : Logitech. • RAM : 256 Mb. SOFTWARE REQUIREMENTS: • Operating system : - Windows XP. • Front End : - JSP • Back End : - SQL Server