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Aspect based sentiment analysis

Thesis Info

Author

Nasim, Zarmeen; Supervised by Dr. Sajjad Haider

Program

MS

Institute

Institute of Business Administration

Institute Type

Private

City

Karachi

Province

Sindh

Country

Pakistan

Thesis Completing Year

2016

Subject

Management

Language

English

Other

CallNo: 658.8343

Added

2021-02-17 19:49:13

Modified

2024-03-24 20:25:49

ARI ID

1676720941457

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Sentiment Analysis has become a popular area of research due to exponential increase in the volume of user generated content with the rise of Internet and Social Networking Websites. Sentiment Analysis can be performed at different level of granularities such as document level, sentence level and aspect level. Aspect level sentiment analysis provides more deeper insights on how customer feels about product/service. Aspect term extraction, aspect category detection and sentiment polarity detection are the core tasks in aspect based opinion mining. This report presents existing state-of-the-art approaches for performing aspect level opinion mining. We have also provided a comprehensive list of publicly available lexicons and annotated datasets that can be used to build aspect level sentiment analysis systems. The first chapter introduces the research area of Opinion Mining. The second chapter focuses on aspect level opinion mining. In the next three chapters, we have discussed approaches of aspect term extraction, aspect category detection and aspect polarity identification. Taxonomy of various approaches discussed in literature related to opinion mining is presented in Chapter 6. Chapter 7 presents evaluation metrics and various publicly available lexicons and datasets. Chapter 8 provides details of our tool named ABSA Toolkit developed using state-of-art techniques of aspect level opinion mining. The report concludes with some emerging techniques and research issues in opinion mining
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مولانا محمد عثمان

مولانا محمد عثمان
افسوس ہے چند ماہ ہوئے مولانا محمد عثمان صاحب کا بھی اپنے وطن مالیگاؤں میں انتقال ہوگیا۔مولانا دارالعلوم دیوبند کے فارغ التحصیل تھے، استعداد پختہ تھی۔ یوں تو ان کومناسبت اوردلچسپی کم وبیش ہرفن سے تھی تاہم تفسیر اور حدیث ان کا خاص فن تھے۔ ایک عرصہ تک مالیگاؤں کے مختلف مدارس میں استاد رہے لیکن ان کی زندگی کاسب سے بڑااوراہم کارنامہ جوان کے لیے بقائے دوام کا ضامن ہے، مسلمان لڑکیوں کے لیے درس نظامی کاوہ عظیم الشان مدرسہ ہے جومالیگاؤں میں جامعۃ الصالحات کے نام سے معروف ومشہور ہے، اب تو لڑکیوں کے لیے بڑے بڑے عربی مدارس ادھراُدھر اوربھی کئی ایک ہوگئے اور ہوتے جارہے ہیں لیکن صوری اورمعنوی دونوں اعتبار سے جامعۃ الصالحات کو یک گونہ شرف فضیلت و تقدم حاصل ہے اوریہ سب کچھ نتیجہ ہے مولانا مرحوم کے اخلاص ومحبت،محنت ومشقت اور ذوق تعمیر وحسن انتظام کا۔
راقم نے کئی مرتبہ جامعہ کی دورۂ حدیث کی طالبات کاامتحان لیاہے اور ہرمرتبہ طالبات کے صحیح اور برمحل جوابات سے دل نے مسرت محسوس کی ہے۔ ان کو جامعۃ الصالحات سے عشق تھا، شب وروز اس کے کاموں میں مصروف رہتے تھے۔ اﷲ تعالیٰ ان کوعلماوصلحا کا مقام جلیل عطافرمائے اورجامعۃ الصالحات کوکسی قسم کے شر اورضررسے محفوظ رکھے۔ [جولائی۱۹۸۴ء]

 

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