In recent years,with the development of the social Internet of Things(IoT),all kinds of data accumulated on the network.These data,which contain a lot of social information and opinions.However,these data are rarely f...In recent years,with the development of the social Internet of Things(IoT),all kinds of data accumulated on the network.These data,which contain a lot of social information and opinions.However,these data are rarely fully analyzed,which is a major obstacle to the intelligent development of the social IoT.In this paper,we propose a sentence similarity analysis model to analyze the similarity in people’s opinions on hot topics in social media and news pages.Most of these data are unstructured or semi-structured sentences,so the accuracy of sentence similarity analysis largely determines the model’s performance.For the purpose of improving accuracy,we propose a novel method of sentence similarity computation to extract the syntactic and semantic information of the semi-structured and unstructured sentences.We mainly consider the subjects,predicates and objects of sentence pairs and use Stanford Parser to classify the dependency relation triples to calculate the syntactic and semantic similarity between two sentences.Finally,we verify the performance of the model with the Microsoft Research Paraphrase Corpus(MRPC),which consists of 4076 pairs of training sentences and 1725 pairs of test sentences,and most of the data came from the news of social data.Extensive simulations demonstrate that our method outperforms other state-of-the-art methods regarding the correlation coefficient and the mean deviation.展开更多
This paper aims to make it clear that syntactic analysis should be based on the lexical information given in the lexicon.For this purpose,lexical information of the syntactic argument is to be taken the form like[VP N...This paper aims to make it clear that syntactic analysis should be based on the lexical information given in the lexicon.For this purpose,lexical information of the syntactic argument is to be taken the form like[VP NKP,_,DKP,AKP]for the ditransitive verb give in English.The argument structure projects to syntactic structure.The NKP in this structure becomes VP-subject,but there is another subject called S-subject(Sentence-Subject)below S node.This amounts to Two-Subject Hypothesis for English.Between these two subjects,there intervene Conjugation-Like Elements,enriched by close examination of English verbal conjugation.Two-Subject Hypothesis perfectly accounts for peculiarities of the Expletive There(ET)construction.Restructuring can also explain the so-called Long Distance Wh-interrogative without introducing Wh-movement,and it can also explain why the imperative verbs are taking the base forms.It can also explain the characteristics of adjective imperatives by the same principles as applied to verbal imperatives.We try to deal with the other subtle problems,to get fruitful results.Restructuring approach,we think,provides more convincing explanations than the movement one.展开更多
基金supported by the Major Scientific and Technological Projects of CNPC under Grant ZD2019-183-006partially supported by the Shandong Provincial Natural Science Foundation,China under Grant ZR2020MF006partially supported by“the Fundamental Research Funds for the Central Universities”of China University of Petroleum(East China)under Grant 20CX05017A,18CX02139A.
文摘In recent years,with the development of the social Internet of Things(IoT),all kinds of data accumulated on the network.These data,which contain a lot of social information and opinions.However,these data are rarely fully analyzed,which is a major obstacle to the intelligent development of the social IoT.In this paper,we propose a sentence similarity analysis model to analyze the similarity in people’s opinions on hot topics in social media and news pages.Most of these data are unstructured or semi-structured sentences,so the accuracy of sentence similarity analysis largely determines the model’s performance.For the purpose of improving accuracy,we propose a novel method of sentence similarity computation to extract the syntactic and semantic information of the semi-structured and unstructured sentences.We mainly consider the subjects,predicates and objects of sentence pairs and use Stanford Parser to classify the dependency relation triples to calculate the syntactic and semantic similarity between two sentences.Finally,we verify the performance of the model with the Microsoft Research Paraphrase Corpus(MRPC),which consists of 4076 pairs of training sentences and 1725 pairs of test sentences,and most of the data came from the news of social data.Extensive simulations demonstrate that our method outperforms other state-of-the-art methods regarding the correlation coefficient and the mean deviation.
文摘This paper aims to make it clear that syntactic analysis should be based on the lexical information given in the lexicon.For this purpose,lexical information of the syntactic argument is to be taken the form like[VP NKP,_,DKP,AKP]for the ditransitive verb give in English.The argument structure projects to syntactic structure.The NKP in this structure becomes VP-subject,but there is another subject called S-subject(Sentence-Subject)below S node.This amounts to Two-Subject Hypothesis for English.Between these two subjects,there intervene Conjugation-Like Elements,enriched by close examination of English verbal conjugation.Two-Subject Hypothesis perfectly accounts for peculiarities of the Expletive There(ET)construction.Restructuring can also explain the so-called Long Distance Wh-interrogative without introducing Wh-movement,and it can also explain why the imperative verbs are taking the base forms.It can also explain the characteristics of adjective imperatives by the same principles as applied to verbal imperatives.We try to deal with the other subtle problems,to get fruitful results.Restructuring approach,we think,provides more convincing explanations than the movement one.