“…Many works have viewed the summarization problem as a supervised classification problem in which several features are used to predict the inclusion of document sentences in the summary. Variations of supervised models have been utilized for summary generation, such as: maximum entropy (Osborne, 2002), HMM (Conroy et al, 2011), CRF (Galley, 2006;Shen et al, 2007;Chali and Hasan, 2012), SVM (Xie and Liu, 2010), logistic regression (Louis et al, 2010) and reinforcement learning (Rioux et al, 2014). Problems with supervised models in context of summarization include the need for large amount of annotated data and domain dependency.…”