We investigate the effect of using sentiment expression boundaries in predicting sentiment polarity in aspect-level sentiment analysis. We manually annotate a freely available English sentiment polarity dataset with these boundaries and carry out a series of experiments which demonstrate that high quality sentiment expressions can boost the performance of polarity classification. Our experiments with neural architectures also show that CNN networks outperform LSTMs on this task and dataset.
Sokheng KhimYe Kyaw ThuSethserey Sam
Mihaela ColhonMâdâlina CerbanAlex BecheruMirela Teodorescu
Shoushan LiZhongqing WangSophia Yat Mei LeeChu‐Ren Huang