National Natural Science Foundation of China (No.61563051, No.61662074, No.61262064);Key Program of National Natural Science Foundation of China (No.61331011);Science and Technology Talents Cultivation Program of Xinjiang Uygur Autonomous Region (No.QN2016YX0051)
YANG Qi-meng, YU Long, TIAN Sheng-wei, et al. Anaphora Resolution of Uyghur Personal Pronouns Based on Deep Reinforcement Learning[J]. Acta Electronica Sinica, 2020, 48(6): 1077-1083.
DOI:
YANG Qi-meng, YU Long, TIAN Sheng-wei, et al. Anaphora Resolution of Uyghur Personal Pronouns Based on Deep Reinforcement Learning[J]. Acta Electronica Sinica, 2020, 48(6): 1077-1083. DOI: 10.3969/j.issn.0372-2112.2020.06.005.
Anaphora Resolution of Uyghur Personal Pronouns Based on Deep Reinforcement Learning
Deep neural network models for Uyghur personal pronouns resolution learn semantic information for current anaphora chain
but ignore the long-term effects of single anaphora chain recognition results. This paper proposes a Uyghur personal pronoun anaphora resolution based on deep reinforcement learning. This method defines the anaphora resolution task as the sequential decision process under the reinforcement learning environment
and effectively uses the antecedent information in the previous state to determine the current personal pronoun-candidate antecedent pairs. In this study
we use an overall reward signal optimization strategy
which is more efficient than directly using the loss fun
ction heuristic to optimize a specific single decision. Finally
we conduct experiments in the Uyghur dataset. The experimental results show that the
F
value of this method in the Uyghur personal pronouns resolution task is 85.80%. The experimental results show that the deep reinforcement learning model can significantly improve the performance of the Uyghur personal pronouns resolution.