Carenini, Giuseppe
W-RST: Towards a Weighted RST-style Discourse Framework
Huber, Patrick, Xiao, Wen, Carenini, Giuseppe
Aiming for a better integration of data-driven and linguistically-inspired approaches, we explore whether RST Nuclearity, assigning a binary assessment of importance between text segments, can be replaced by automatically generated, real-valued scores, in what we call a Weighted-RST framework. In particular, we find that weighted discourse trees from auxiliary tasks can benefit key NLP downstream applications, compared to nuclearity-centered approaches. We further show that real-valued importance distributions partially and interestingly align with the assessment and uncertainty of human annotators.
Unsupervised Learning of Discourse Structures using a Tree Autoencoder
Huber, Patrick, Carenini, Giuseppe
Discourse information, as postulated by popular discourse theories, such as RST and PDTB, has been shown to improve an increasing number of downstream NLP tasks, showing positive effects and synergies of discourse with important real-world applications. While methods for incorporating discourse become more and more sophisticated, the growing need for robust and general discourse structures has not been sufficiently met by current discourse parsers, usually trained on small scale datasets in a strictly limited number of domains. This makes the prediction for arbitrary tasks noisy and unreliable. The overall resulting lack of high-quality, high-quantity discourse trees poses a severe limitation to further progress. In order the alleviate this shortcoming, we propose a new strategy to generate tree structures in a task-agnostic, unsupervised fashion by extending a latent tree induction framework with an auto-encoding objective. The proposed approach can be applied to any tree-structured objective, such as syntactic parsing, discourse parsing and others. However, due to the especially difficult annotation process to generate discourse trees, we initially develop a method to generate larger and more diverse discourse treebanks. In this paper we are inferring general tree structures of natural text in multiple domains, showing promising results on a diverse set of tasks.
Improving Context Modeling in Neural Topic Segmentation
Xing, Linzi, Hackinen, Brad, Carenini, Giuseppe, Trebbi, Francesco
Topic segmentation is critical in key NLP tasks and recent works favor highly effective neural supervised approaches. However, current neural solutions are arguably limited in how they model context. In this paper, we enhance a segmenter based on a hierarchical attention BiLSTM network to better model context, by adding a coherence-related auxiliary task and restricted self-attention. Our optimized segmenter outperforms SOTA approaches when trained and tested on three datasets. We also the robustness of our proposed model in domain transfer setting by training a model on a large-scale dataset and testing it on four challenging real-world benchmarks. Furthermore, we apply our proposed strategy to two other languages (German and Chinese), and show its effectiveness in multilingual scenarios.
What's Hot in Intelligent User Interfaces
Pan, Shimei (University of Maryland, Baltimore County) | Brdiczka, Oliver (Vectra Networks) | Carenini, Giuseppe (University of British Columbia) | Chau, Duen Horng (Georgia Institute of Technology) | Kristensson, Per Ola (University of Cambridge)
The ACM Conference on Intelligent User Interfaces (IUI) is the annual meeting of the intelligent user interface community and serves as a premier international forum for reporting outstanding research and development on intelligent user interfaces. ACM IUI is where the Human-Computer Interaction (HCI) community meets the Artificial Intelligence (AI) community. Here we summarize the latest trends in IUI based on our experience organizing the 20th ACM IUI Conference in Atlanta in 2015. At ACM IUI, we address the complex interactions between Figure 1: Take a Selfie with Hairware machine intelligence and human intelligence by leveraging solutions from machine learning, knowledge representation and new interaction technologies. Although submissions focusing paradigms have emerged. For example, at IUI 2015, conductive on only Artificial Intelligence (AI) or Human Computer hair extensions were used to send messages, record Interaction (HCI) will be considered, we give strong conversations and control cameras (Vega, Cunha, and Fuks preferences to submissions that discuss research from both 2015) (Figure 1).
Towards User-Adaptive Information Visualization
Conati, Cristina (University of British Columbia) | Carenini, Giuseppe (University of British Columbia) | Toker, Dereck (University of British Columbia) | Lallรฉ, Sรฉbastien (University of British Columbia)
This paper summarizes an ongoing multi-year project aiming to uncover knowledge and techniques for devising intelligent environments for user-adaptive visualizations. We ran three studies designed to investigate the impact of user and task characteristics on user performance and satisfaction in different visualization contexts. Eye-tracking data collected in each study was analyzed to uncover possible interactions between user/task characteristics and gaze behavior during visualization processing. Finally, we investigated user models that can assess user characteristics relevant for adaptation from eye tracking data.
Supervised Topic Segmentation of Email Conversations
Joty, Shafiq (University of British Columbia) | Carenini, Giuseppe (University of British Columbia) | Murray, Gabriel (University of British Columbia) | Ng, Raymond T (University of British Columbia)
We propose a graph-theoretic supervised topic segmentation model for email conversations which combines (i) lexical knowledge, (ii) conversational features, and (iii) topic features. We compare our results with the existing unsupervised models (i.e., LCSeg and LDA), and with their two extensions for email conversations (i.e., LCSeg+FQG and LDA+FQG) that not only use lexical information but also exploit finer conversation structure. Empirical evaluation shows that our supervised model is the best performer and achieves highest accuracy by combining the three different knowledge sources, where knowledge about the conversation has proved to be the most important indicator for segmenting emails.
Model AI Assignments
Neller, Todd William (Gettysburg College) | DeNero, John (University of California, Berkeley) | Klein, Dan (University of California, Berkeley) | Koenig, Sven (University of Southern California) | Yeoh, William (University of Southern California) | Zheng, Xiaoming (University of Southern California) | Daniel, Kenny (University of Southern California) | Nash, Alex (University of Southern California) | Dodds, Zachary (Harvey Mudd College) | Carenini, Giuseppe (University of British Columbia) | Poole, David (University of British Columbia) | Brooks, Chris (University of San Francisco)
The Model AI Assignments session seeks to gather and disseminate the best assignment designs of the Artificial Intelligence (AI) Education community. Recognizing that assignments form the core of student learning experience, we here present abstracts of eight AI assignments that are easily adoptable, playfully engaging, and flexible for a variety of instructor needs.