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Paper Related Paper Student Andrew ID
Measuring_User_Influence_in_Twitter:_The_Million_Follower_Fallacy Influentials, Networks, and Public Opinion Formation [1]
Ramage_et_al_ICWSM_2010 Is it Really About Me? Message Content in Social Awareness Streams [Ramage_et_al_ICWSM_2010]
Rosen-Zvi_et_al,_The_Author-Topic_Model_for_Authors_and_Documents The Missing Link - A Probabilistic Model of Document Content and Hypertext Connectivity [2]
Vladimir_Ouzienko,_Prediction_of_Attributes_and_Links_in_Temporal_Social_Networks Introduction to stochastic actor-based models for network dynamics [3]
Y._Borghol_et_al._Performance_Evaluation_68_2011 The Untold Story of the Clones: Content-agnostic Factors that Impact YouTube Video Popularity [4]
Yang_et_al_Modeling_Information_Diffusion_in_Implicit_Networks Inferring the Diffusion and Evolution of Topics in Social Communities [5]
Zheleva_ACM_2009 Geographic routing in social networks [6]
Zheleva_and_Getoor,_WWW2009 Preserving the privacy of sensitive relationships in graph data. PinKDD, 2007 [7]
Ritter_et_al,_EMNLP_2011._Named_Entity_Recognition_in_Tweets:_An_Experimental_Study Event discovery in social media feeds [8]
Mrinmaya_et._al._WWW'12 The Author-Recipient-Topic Model for Topic and Role Discovery in Social Networks: Experiments with Enron and Academic Email [9]
Miller_et_al_ICWSM_2011 Can predicate-argument structures be used for contextual opinion retrieval from blogs? [10]
Modeling_Contagion_Through_Facebook_News_Feed Cascading Behavior in Large Blog Graphs [cs.stanford.edu/~jure/pubs/blogs-sdm07.pdf]
OConnor_et._al.,_ICWSM_2010 Widespread Worry and the Stock Market [11]
Reviewing_social_media_use_by_clinicians Integrating the hospital library with patient care, teaching and research: model and Web 2.0 tools to create a social and collaborative community of clinical research in a hospital setting. [12]
Ritter_et_al_NAACL_2010._Unsupervised_Modeling_of_Twitter_Conversations Catching the drift: Probabilistic content models, with applications to generation and summarization [13]
Yano_et_al_ICWSM_2010._What’s_Worthy_of_Comment?_Content_and_Comment_Volume_in_Political_Blogs Mixed membership models of scientific publication [14]
Yano_et_al_NAACL_2009 Link-PLSA-LDA: A new unsupervised model for topics and influence of blogs [15]
Yeh_et_al_WikiWalk_Random_walks_on_Wikipedia_for_Semantic_Relatedness Personalizing PageRank for Word Sense Disambiguation [16]
Link_propagation:_A_fast_semi-supervised_learning_algorithm_for_link_prediction Fast and scalable algorithms for semi-supervised link prediction on static and dynamic graphs [17]
Rodriguez_et_al_Oct_2011 The origin of bursts and heavy tails in human dynamics [18]
A_Discriminative_Latent_Variable_Model_for_SMT An End-to-End Discriminative Approach to Machine Translation [19]
A_Latent_Variable_Model_for_Geographic_Lexical_Variation Q. Mei, C. Liu, H. Su, and C. X Zhai. 2006. A probabilistic approach to spatiotemporal theme pattern mining on weblogs. In Proceedings of WWW [20]
Accurate_Unlexicalized_Parsing Learning Accurate, Compact, and Interpretable Tree Annotation, S. Petrov, L. Barrett, R. Thibaux, D. Klein, ACL 2006 [21]
Agarwal_et_al,_ICWSM_2009#Related_Works_and_Papers Latent Friend Mining from Blog Data, ICDM 2006 [22]
Akcora_et_al,_SOMA_2010 L. Ku, Y. Liang, and H. Chen. Opinion extraction, summarization and tracking in news and blog corpora. In Proceedings of AAAI-2006 [23]
Anderson_et_al_KDD2012 Predicting web searcher satisfaction with existing community-based answers [24]
Birke&Sarkar,FigLanguages07 A Clustering Approach for the Nearly Unsupervised Recognition of Nonliteral Language, EACL-2006 [25]
Capturing_Global_Mood_Levels_using_Blog_Posts Modeling Public Mood and Emotion: Twitter Sentiment and Socio-Economic Phenomena [26]
Chambers_and_Jurafsky,_Unsupervised_Learning_of_Narrative_Event_Chains,_ACL_2008 Chklovski and Pantel (2004) Verbocean:Mining the web for fine-grained semantic verb relations [27]
Das_Sarma_et._al.,_Dynamic_Relationship_and_Event_Discovery,_WSDM_2011 Q. Zhao, P. Mitra, and B. Chen. Temporal and information flow based event detection from social text streams. In AAAI, 2007 [28]
E.A._Leicht,_Structure_of_Time_Evo_citation_networks_2007 Detecting Topic Evolution in Scientific Literature: How Can Citations Help? [29]
Domain-Assisted_Product_Aspect_Hierarchy_Generation:_Towards_Hierarchical_Organization_of_Unstructured_Consumer_Reviews Learning object models from semistructured Web documents [30]
Gilbert_et_al.,_ICWSM_2010 A Sentiment Detection Engine for Internet Stock Message Boards [31]
Hassan_et_al,_ICWSM_2009 Document representation and query expansion models for blog recommendation [32]
Leskovec_et_al.,_WWW_2010 Statistical properties of community structure in large social and information networks. In WWW ’08 [33]
Andreevskaia_et_al.,_ICWSM_2007 M. Hurst and K. Nigam. Retrieving topical sentiments from online document collection. [34]
Collier_et_al._Journal_of_Biomedical_Semantics_2011 Modeling Spread of Disease from Social Interaction [35]
BinLu_et_al._ACL2011 Learning Multilingual Subjective Language via Cross-Lingual Projections [36]
Esuli_and_Sebastiani_LREC_2006 Determining term subjectivity and term orientation for opinion mining. [37]
Davidov_et_al_COLING_10 Structured Models for Fine-to-Coarse Sentiment Analysis [38]