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    Persian sentiment lexicon expansion using unsupervised learning methods

    , Article 9th International Conference on Computer and Knowledge Engineering, ICCKE 2019, 24 October 2019 through 25 October 2019 ; 2019 , Pages 461-465 ; 9781728150758 (ISBN) Akhoundzade, R ; Hashemi Devin, K ; Sharif University of Technology
    Institute of Electrical and Electronics Engineers Inc  2019
    Abstract
    Sentiment analysis, is a subfield of natural language processing that aims at opinion mining to analyze thoughts, orientation and, evaluation of users within some texts. The solution to this problem includes two main steps: extracting aspects and determining users' positive or negative sentiments with respect to the aspects. Two main challenges of sentiment analysis in the Persian language are lack of comprehensive tagged data sets and use of colloquial language in texts. In this paper we propose, a system to specify and extract sentiment words using unsupervised methods in the Persian language that also support colloquial words. Additionally, we also proposed and implemented a state-of-art... 

    History based unsupervised data oriented parsing

    , Article International Conference Recent Advances in Natural Language Processing, RANLP ; September , 2013 , Pages 453-459 ; 13138502 (ISSN) Mesgar, M ; Ghasem Sani, G ; Sharif University of Technology
    2013
    Abstract
    Grammar induction is a basic step in natural language processing. Based on the volume of information that is used by different methods, we can distinguish three types of grammar induction method: supervised, unsupervised, and semi-supervised. Supervised and semisupervised methods require large tree banks, which may not currently exist for many languages. Accordingly, many researchers have focused on unsupervised methods. Unsupervised Data Oriented Parsing (UDOP) is currently the state of the art in unsupervised grammar induction. In this paper, we show that the performance of UDOP in free word order languages such as Persian is inferior to that of fixed order languages such as English. We... 

    Graph-Based Outlier Detection

    , M.Sc. Thesis Sharif University of Technology Noori Zehmakan, Abdolahad (Author) ; Daneshgar, Amir (Supervisor)
    Abstract
    One of the most heatedly debated issues in Computer Science is Outlier Detection due to its vast and substantial applications such as credit cards, Image Processing,tax fraud detection, and medical approaches. Consequently, Outlier detection has been researched within various domains and knowledge disciplines. On the other hand, the research attempts have not been sufficient to overcome this critical problem considerably inasmuch as nearly all proposed techniques are associated with a special kind of applications or datasets.Firstly, this thesis attempts to provide a precise definition which not only excludes other one’s drawbacks, but also has its distinctive merits. Three essential... 

    Persian Aspect-based Sentiment Analysis using Unsupervised Learning Methods

    , M.Sc. Thesis Sharif University of Technology Akhondzadeh, Reza (Author) ; Ghasem-Sani, Gholamreza (Supervisor)
    Abstract
    Sentiment analysis, is a subfield of natural language processing that aims at opinion mining to analyze thoughts, orientation and evaluation of users within some texts. Different organizations in multiple social domains, use this approach as a tool to asses their strengths and shortcomings. In sentiment analysis, the goal is to use machine learning techniques with the purpose of specifying users’ positive or negative orientation about a product or merchandise. The solution to this problem includes two main steps: extracting aspects and determining users’ positive or negative sentiments in respect to the aspects. Two main challenges of sentiment analysis in Farsi, are lack of comprehensive... 

    Linear discourse segmentation of multi-party meetings based on local and global information

    , Article IEEE/ACM Transactions on Speech and Language Processing ; Volume 23, Issue 11 , July , 2015 , Pages 1879-1891 ; 23299290 (ISSN) Bokaei, M. H ; Sameti, H ; Liu, Y ; Sharif University of Technology
    Institute of Electrical and Electronics Engineers Inc  2015
    Abstract
    Linear segmentation of a meeting conversation is beneficial as a stand-alone system (to organize a meeting and make it easier to access) or as a preprocessing step for many other meeting related tasks. Such segmentation can be done according to two different criteria: topic in which a meeting is segmented according to the different items in its agenda, and function in which the segmentation is done according to the meeting's different events (like discussion, monologue). In this article we concentrate on the function segmentation task and propose new unsupervised methods to segment a meeting into functionally coherent parts. The first proposed method assigns a score to each possible boundary... 

    Abnormal event detection and localisation in traffic videos based on group sparse topical coding

    , Article IET Image Processing ; Volume 10, Issue 3 , 2016 , Pages 235-246 ; 17519659 (ISSN) Ahmadi, P ; Tabandeh, M ; Gholampour, I ; Sharif University of Technology
    Institution of Engineering and Technology  2016
    Abstract
    In visual surveillance, detecting and localising abnormal events are of great interest. In this study, an unsupervised method is proposed to automatically discover abnormal events occurring in traffic videos. For learning typical motion patterns occurring in such videos, a group sparse topical coding (GSTC) framework and an improved version of it are applied to optical flow features extracted from video clips. Then a very simple and efficient algorithm is proposed for GSTC. It is shown that discovered motion patterns can be employed directly in detecting abnormal events. A variety of abnormality metrics based on the resulting sparse codes for detection of abnormality are investigated.... 

    A new two-stage topic model based framework for modeling traffic motion patterns

    , Article 10th Iranian Conference on Machine Vision and Image Processing, MVIP 2017 ; Volume 2017-November , April , 2018 , Pages 276-280 ; 21666776 (ISSN) ; 9781538644041 (ISBN) Ahmadi, P ; Gholampour, I ; Tabandeh, M ; Sharif University of technology
    IEEE Computer Society  2018
    Abstract
    Analyzing motion patterns in traffic videos can be exploited directly to generate high-level descriptions of the video content. The most recent and successful unsupervised methods for complex traffic scene analysis are based on topic models. In this paper, a new two-stage framework is proposed for traffic motion pattern extraction based on topic models. This framework forces the topic model to learn known meaningful motion patterns in traffic scenes. Latent Dirichlet Allocation (LDA) is employed as the topic model. Experimental results show that our proposed framework finds the motion patterns more efficiently and gives a meaningful representation for the video. © 2017 IEEE  

    User adaptive clustering for large image databases

    , Article Proceedings - International Conference on Pattern Recognition, 23 August 2010 through 26 August 2010, Istanbul ; 2010 , Pages 4271-4274 ; 10514651 (ISSN) ; 9780769541099 (ISBN) Saboorian, M. M ; Jamzad, M ; Rabiee, H. R ; Sharif University of Technology
    2010
    Abstract
    Searching large image databases is a time consuming process when done manually. Current CBIR methods mostly rely on training data in specific domains. When source and domain of images are unknown, unsupervised methods provide better solutions. In this work, we use a hierarchical clustering scheme to group images in an unknown and large image database. In addition, the user should provide the current class assignment of a small number of images as a feedback to the system. The proposed method uses this feedback to guess the number of required clusters, and optimizes the weight vector in an iterative manner. In each step, after modification of the weight vector, the images are reclustered. We...