A Confidence-Aware Approach for Truth Discovery on Long-Tail Data

@article{Li2014ACA,
  title={A Confidence-Aware Approach for Truth Discovery on Long-Tail Data},
  author={Qi Li and Yaliang Li and Jing Gao and Lu Su and Bo Zhao and Murat Demirbas and Wei Fan and Jiawei Han},
  journal={PVLDB},
  year={2014},
  volume={8},
  pages={425-436}
}
In many real world applications, the same item may be described by multiple sources. As a consequence, conflicts among these sources are inevitable, which leads to an important task: how to identify which piece of information is trustworthy, i.e., the truth discovery task. Intuitively, if the piece of information is from a reliable source, then it is more trustworthy, and the source that provides trustworthy information is more reliable. Based on this principle, truth discovery approaches have… CONTINUE READING

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