Statistical language modeling techniques are investigated so as to construct a language model for Chinese text proofreading. After the defects of n-gram model are analyzed, a novel statistical language model for Chine...Statistical language modeling techniques are investigated so as to construct a language model for Chinese text proofreading. After the defects of n-gram model are analyzed, a novel statistical language model for Chinese text proofreading is proposed. This model takes full account of the information located before and after the target word wi, and the relationship between un-neighboring words w_i and w_j in linguistic environment(LE). First, the word association degree between w_i and w_j is defined by using the distance-weighted factor, w_j is l words apart from w_i in the LE, then Bayes formula is used to calculate the LE related degree of word w_i, and lastly, the LE related degree is taken as criterion to predict the reasonability of word w_i that appears in context. Comparing the proposed model with the traditional n-gram in a Chinese text automatic error detection system, the experiments results show that the error detection recall rate and precision rate of the system have been improved.展开更多
Generally, text proofreading consists of two procedures, finding the wrongly used words and then presenting the correct forms. At present, most of the Chinese text proofreading focuses on finding the wrongly used word...Generally, text proofreading consists of two procedures, finding the wrongly used words and then presenting the correct forms. At present, most of the Chinese text proofreading focuses on finding the wrongly used words, but pays less attention to correcting these errors. In this paper, the Chinese text features are interpreted first and then a Chinese text proofreading method and its algorithm are introduced. In this algorithm, text features, including text statistical feature and language structure feature, are properly used. Here, correcting errors goes on at the same time with finding errors. Experimental results show that this method has a performance of detecting 75% of wrongly used Chinese words and correcting about 60% of them with the first candidates.展开更多
文摘Statistical language modeling techniques are investigated so as to construct a language model for Chinese text proofreading. After the defects of n-gram model are analyzed, a novel statistical language model for Chinese text proofreading is proposed. This model takes full account of the information located before and after the target word wi, and the relationship between un-neighboring words w_i and w_j in linguistic environment(LE). First, the word association degree between w_i and w_j is defined by using the distance-weighted factor, w_j is l words apart from w_i in the LE, then Bayes formula is used to calculate the LE related degree of word w_i, and lastly, the LE related degree is taken as criterion to predict the reasonability of word w_i that appears in context. Comparing the proposed model with the traditional n-gram in a Chinese text automatic error detection system, the experiments results show that the error detection recall rate and precision rate of the system have been improved.
文摘Generally, text proofreading consists of two procedures, finding the wrongly used words and then presenting the correct forms. At present, most of the Chinese text proofreading focuses on finding the wrongly used words, but pays less attention to correcting these errors. In this paper, the Chinese text features are interpreted first and then a Chinese text proofreading method and its algorithm are introduced. In this algorithm, text features, including text statistical feature and language structure feature, are properly used. Here, correcting errors goes on at the same time with finding errors. Experimental results show that this method has a performance of detecting 75% of wrongly used Chinese words and correcting about 60% of them with the first candidates.