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報告主題:Aspect-Oriented Syntax Network for Aspect-Based Sentiment Analysis

報告摘要:Aspect-based sentiment analysis aims to determine the sentimental polarity towards a specific aspect in reviews or comments. Recent attempts mostly adopt attention-based mechanisms to link opinion words to their respective aspects in an implicit way. However, due to the tangle of multiple aspects or opinion words occurred in one sentence, the models often mix up the linkages. In this paper, we propose to encode sentence syntax explicitly to improve the effect of the linkages. We define an aspect-oriented dependency tree structure, which is reshaped and pruned from an ordinary parse tree, to express useful syntax information. The new tree is then encoded into a multifaceted syntax network, to be used in combination with attention-based models for prediction. Experimental results on three datasets from SemEval 2014 and Twitter show that, with our syntax network, the aspect-sentiment linkages can be better established and the attention-based models are substantially improved as a result.

嘉賓簡介:權小軍,教授,博士生導師。先后于中國科學技術大學計算機系、香港城市大學計算機系、美國羅格斯大學商學院、美國普渡大學計算機系、香港城市大學語言學與翻譯系、新加坡科技研究局資訊通信研究院從事自然語言處理、文本挖掘和機器學習的研究工作,在國際知名期刊和會議如IEEE T-PAMI,ACM TOIS,ACL,IJCAI,SIGIR等發表論文30余篇。權小軍2012年畢業于香港城市大學,獲博士學位,回國前就職于新加坡科技研究局資訊通信研究院,任研究科學家,期間除從事相關方向的基礎研究外,也同工業界緊密合作探索研究成果的應用。

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狹義的情感分析(sentiment analysis)是指利用計算機實現對文本數據的觀點、情感、態度、情緒等的分析挖掘。廣義的情感分析則包括對圖像視頻、語音、文本等多模態信息的情感計算。簡單地講,情感分析研究的目標是建立一個有效的分析方法、模型和系統,對輸入信息中某個對象分析其持有的情感信息,例如觀點傾向、態度、主觀觀點或喜怒哀樂等情緒表達。

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Target-Based Sentiment Analysis aims to detect the opinion aspects (aspect extraction) and the sentiment polarities (sentiment detection) towards them. Both the previous pipeline and integrated methods fail to precisely model the innate connection between these two objectives. In this paper, we propose a novel dynamic heterogeneous graph to jointly model the two objectives in an explicit way. Both the ordinary words and sentiment labels are treated as nodes in the heterogeneous graph, so that the aspect words can interact with the sentiment information. The graph is initialized with multiple types of dependencies, and dynamically modified during real-time prediction. Experiments on the benchmark datasets show that our model outperforms the state-of-the-art models. Further analysis demonstrates that our model obtains significant performance gain on the challenging instances under multiple-opinion aspects and no-opinion aspect situations.

Aspect-term level sentiment analysis (ATSA) is a fine-grained task in sentiment classification. It aims at extracting and summarizing the sentiment polarity towards a given aspect phrase from a sentence. Most existing studies combined various neural network models with a delicately carved attention mechanism to generate refined representations of sentences for better predictions. However, they were inadequate to capture correlations between aspects and sentiments. Moreover, the annotated aspect term might be unavailable in real-world scenarios which may challenge the existing methods to give correct forecasting. In this paper, we propose a capsule network based model named CAPSAR (CAPsule network with Sentiment-Aspect Reconstruction) to improve aspect-term level sentiment analysis. CAPSAR adopts a hierarchical structure of capsules and learns interactive patterns between aspects and sentiments through packaged sentiment-aspect reconstruction. Capsules in CAPSAR are capable of communicating with other capsules through a sharing-weight routing algorithm. Experiments on three ATSA benchmarks demonstrate the superiority of our model, and CAPSAR can detect the potential aspect terms from sentences by de-capsulizing the vectors in capsules when aspect terms are unknown.

報告主題:網絡表示學習

報告摘要:數據特征的有效表示是機器學習任務中最為關鍵環節之一。網絡數據(如社交網絡、信息網絡等)作為普適而廣泛的數據呈現形式,對它的高效表示學習是近年來數據挖掘和機器學習領域的研究熱點之一。本報告將重點圍繞如下內容展開:(1)網絡表示學習的基本概念;(2)幾類新型網絡表示學習方法,包括:網絡Tag表示、域自適應表示、基于網絡劃分的表示以及內存自適應的表示方法等。

嘉賓簡介:宋國杰,北京大學信息科學技術學院副教授。研究方向包括:網絡大數據分析、機器學習&數據挖掘、社會網絡分析和智能交通系統。主持了包括國家高技術研究發展計劃(863計劃)、國家科技支撐計劃、國家自然科學基金等縱向課題10多項;主持了國際(內)科研機構合作課題、企業橫向合作課題等20余項。國家級精品課程主講教師,兩度獲得北京大學教學成果一等獎(2012、2009)。在包括國際頂級期刊TKDE、TPDS、TITS以及國際頂級會議KDD、IJCAI、AAAI等發表論文100余篇,是多個國際頂級會議(KDD、WWW、AAAI、IJCAI等)的程序委員。申請國家發明專利10項,軟件著作權3項。研究成果獲“2012年度中國公路學會科學技術獎一等獎”、“2012年度山西省科學技術獎二等獎”和“2013年度中國公路學會科學技術獎一等獎”。

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報告主題:方面級別情感分析方法研究

報告摘要:方面級別情感分析(Aspect-level Sentiment Analysis)是更細粒度的情感分析任務,近年來受到了越來越多的關注和研究,本報告將介紹主講人在方面級別情感分析任務上的幾項研究工作。(1)提出特征增強注意力網絡,融合單詞內容特征、詞性特征、位置特征得到特征增強的單詞表示,并通過多視圖共注意力機制從不同子空間中充分學習句子中內容詞、方面詞、情感詞間的聯系;(2)從人類認知角度出發,模擬人類閱讀認知過程中預讀、精讀、后讀三個階段,提出包含詞級別交互感知模塊、目標感知語義蒸餾模塊、語義反饋模塊的類人類語義認知網絡,以更貼近人類認知的方式解決方面級別情感分析問題;(3)提出一個人工標注的大規模方面級別情感分析數據集,顯著提升了方面級別情感分析任務的難度,同時提出了一個新模型,在新的數據集中表現出良好的效果。

嘉賓簡介:楊敏,中國科學院深圳先進技術研究院助理研究員,中科院深圳先進院得理法律人工智能聯合實驗室主任。2017年博士畢業于香港大學計算機科學專業,主要從事自然語言處理領域的研究,如情感分析、主題模型、文本摘要、智能問答等,在相關領域的知名學術期刊和會議(如AAAI, SIGIR, ACL, IJCAI, KDD, EMNLP, CIKM, TKDE,TOC, TMM)上發表論文50余篇。

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論壇嘉賓:沈華偉 中國科學院計算技術研究所 研究員

報告主題:圖卷積神經網絡及其應用

報告摘要:卷積神經網絡在處理圖像、語音、文本等具有較好空間結構的數據時展現出了很好的優勢。然而,卷積神經網絡不能直接應用于圖(Graph)這類空間結構不規則的數據上。近年來,研究人員開始研究如何將卷積神經網絡遷移到圖數據上,涌現出ChevNet、MoNet、GraphSAGE、GCN、GAT等一系列方法,在基于圖的半監督分類和圖表示學習等任務中表現出很好的性能。報告首先梳理和回顧該方向的主要研究進展和發展趨勢,進而介紹報告人近期在圖卷積神經網絡方面的一些研究工作(ICLR’19; IJCAI’19)。

嘉賓簡介:沈華偉,博士,中國科學院計算技術研究所研究員,中國中文信息學會社會媒體處理專委會副主任。主要研究方向:社交網絡分析、網絡數據挖掘。先后獲得過CCF優博、中科院優博、首屆UCAS-Springer優博、中科院院長特別獎、入選首屆中科院青年創新促進會、中科院計算所“學術百星”。2013年在美國東北大學進行學術訪問。2015年被評為中國科學院優秀青年促進會會員。獲得國家科技進步二等獎、北京市科學技術二等獎、中國電子學會科學技術一等獎、中國中文信息學會錢偉長中文信息處理科學技術一等獎。出版個人專/譯著3部,在網絡社區發現、信息傳播預測、群體行為分析等方面取得了系列研究成果,發表論文100余篇。擔任PNAS、IEEE TKDE、ACM TKDD等10余個學術期刊審稿人和KDD、WWW、SIGIR、AAAI、IJCAI、CIKM、WSDM等20余個國際學術會議的程序委員會委員。

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Aspect-based sentiment analysis (ABSA) is to predict the sentiment polarity towards a particular aspect in a sentence. Recently, this task has been widely addressed by the neural attention mechanism, which computes attention weights to softly select words for generating aspect-specific sentence representations. The attention is expected to concentrate on opinion words for accurate sentiment prediction. However, attention is prone to be distracted by noisy or misleading words, or opinion words from other aspects. In this paper, we propose an alternative hard-selection approach, which determines the start and end positions of the opinion snippet, and selects the words between these two positions for sentiment prediction. Specifically, we learn deep associations between the sentence and aspect, and the long-term dependencies within the sentence by leveraging the pre-trained BERT model. We further detect the opinion snippet by self-critical reinforcement learning. Especially, experimental results demonstrate the effectiveness of our method and prove that our hard-selection approach outperforms soft-selection approaches when handling multi-aspect sentences.

Aspect-based sentiment analysis (ABSA), which aims to identify fine-grained opinion polarity towards a specific aspect, is a challenging subtask of sentiment analysis (SA). In this paper, we construct an auxiliary sentence from the aspect and convert ABSA to a sentence-pair classification task, such as question answering (QA) and natural language inference (NLI). We fine-tune the pre-trained model from BERT and achieve new state-of-the-art results on SentiHood and SemEval-2014 Task 4 datasets.

Aspect based sentiment analysis (ABSA) can provide more detailed information than general sentiment analysis, because it aims to predict the sentiment polarities of the given aspects or entities in text. We summarize previous approaches into two subtasks: aspect-category sentiment analysis (ACSA) and aspect-term sentiment analysis (ATSA). Most previous approaches employ long short-term memory and attention mechanisms to predict the sentiment polarity of the concerned targets, which are often complicated and need more training time. We propose a model based on convolutional neural networks and gating mechanisms, which is more accurate and efficient. First, the novel Gated Tanh-ReLU Units can selectively output the sentiment features according to the given aspect or entity. The architecture is much simpler than attention layer used in the existing models. Second, the computations of our model could be easily parallelized during training, because convolutional layers do not have time dependency as in LSTM layers, and gating units also work independently. The experiments on SemEval datasets demonstrate the efficiency and effectiveness of our models.

While existing machine learning models have achieved great success for sentiment classification, they typically do not explicitly capture sentiment-oriented word interaction, which can lead to poor results for fine-grained analysis at the snippet level (a phrase or sentence). Factorization Machine provides a possible approach to learning element-wise interaction for recommender systems, but they are not directly applicable to our task due to the inability to model contexts and word sequences. In this work, we develop two Position-aware Factorization Machines which consider word interaction, context and position information. Such information is jointly encoded in a set of sentiment-oriented word interaction vectors. Compared to traditional word embeddings, SWI vectors explicitly capture sentiment-oriented word interaction and simplify the parameter learning. Experimental results show that while they have comparable performance with state-of-the-art methods for document-level classification, they benefit the snippet/sentence-level sentiment analysis.

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