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Minlie Huang

Researcher at Tsinghua University

Publications -  320
Citations -  12953

Minlie Huang is an academic researcher from Tsinghua University. The author has contributed to research in topics: Computer science & Dialog box. The author has an hindex of 45, co-authored 270 publications receiving 8956 citations. Previous affiliations of Minlie Huang include Microsoft & Ludwig Maximilian University of Munich.

Papers
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Proceedings ArticleDOI

Attention-based LSTM for Aspect-level Sentiment Classification

TL;DR: This paper reveals that the sentiment polarity of a sentence is not only determined by the content but is also highly related to the concerned aspect, and proposes an Attention-based Long Short-Term Memory Network for aspect-level sentiment classification.
Proceedings Article

Emotional Chatting Machine: Emotional Conversation Generation with Internal and External Memory

TL;DR: The authors proposed an Emotional Chat Machine (ECM) that can generate appropriate responses not only in content (relevant and grammatical) but also in emotion (emotionally consistent).
Proceedings ArticleDOI

Commonsense Knowledge Aware Conversation Generation with Graph Attention

TL;DR: This is the first attempt that uses large-scale commonsense knowledge in conversation generation, and unlike existing models that use knowledge triples (entities) separately and independently, this model treats each knowledge graph as a whole, which encodes more structured, connected semantic information in the graphs.
Proceedings ArticleDOI

Learning to identify review spam

TL;DR: This paper exploits machine learning methods to identify review spam and provides a twoview semi-supervised method, co-training, to exploit the large amount of unlabeled data and shows that the proposed method is effective.
Proceedings Article

Structure-Aware Review Mining and Summarization

TL;DR: This paper proposes a new machine learning framework based on Conditional Random Fields that can employ rich features to jointly extract positive opinions, negative opinions and object features for review sentences and shows that structure-aware models outperform many state-of-the-art approaches to review mining.