1. What are the future works in "Table extraction using conditional random fields" ?
There are many promising avenues for further work.
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2. What have the authors contributed in "Table extraction using conditional random fields" ?
This paper presents the use of conditional random fields ( CRFs ) for table extraction, and compares them with hidden Markov models ( HMMs ).. The authors show experimental results on plain-text government statistical reports in which tables are located with 92 % F1, and their constituent lines are classified into 12 table-related categories with 94 % accuracy.. The authors also discuss future work on undirected graphical models for segmenting columns, finding cells, and classifying them as data cells or label cells.
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