scholarly journals Probabilistic Soft Logic for Semantic Textual Similarity

Author(s):  
Islam Beltagy ◽  
Katrin Erk ◽  
Raymond Mooney
2014 ◽  
Author(s):  
Abhay Kashyap ◽  
Lushan Han ◽  
Roberto Yus ◽  
Jennifer Sleeman ◽  
Taneeya Satyapanich ◽  
...  

2020 ◽  
Author(s):  
Shivam Varshney ◽  
Priyanka Sharma ◽  
Hira Javed

Author(s):  
Aaron Rodden ◽  
Tarun Salh ◽  
Eriq Augustine ◽  
Lise Getoor
Keyword(s):  

2021 ◽  
pp. 2000246
Author(s):  
Dong-Dong Li ◽  
Tian-Ying Liu ◽  
Jiao Ye ◽  
Lei Sheng ◽  
Jing Liu

Author(s):  
Alok Debnath ◽  
Nikhil Pinnaparaju ◽  
Manish Shrivastava ◽  
Vasudeva Varma ◽  
Isabelle Augenstein

Author(s):  
Antonio L. Alfeo ◽  
Mario G. C. A. Cimino ◽  
Gigliola Vaglini

AbstractIn nowadays manufacturing, each technical assistance operation is digitally tracked. This results in a huge amount of textual data that can be exploited as a knowledge base to improve these operations. For instance, an ongoing problem can be addressed by retrieving potential solutions among the ones used to cope with similar problems during past operations. To be effective, most of the approaches for semantic textual similarity need to be supported by a structured semantic context (e.g. industry-specific ontology), resulting in high development and management costs. We overcome this limitation with a textual similarity approach featuring three functional modules. The data preparation module provides punctuation and stop-words removal, and word lemmatization. The pre-processed sentences undergo the sentence embedding module, based on Sentence-BERT (Bidirectional Encoder Representations from Transformers) and aimed at transforming the sentences into fixed-length vectors. Their cosine similarity is processed by the scoring module to match the expected similarity between the two original sentences. Finally, this similarity measure is employed to retrieve the most suitable recorded solutions for the ongoing problem. The effectiveness of the proposed approach is tested (i) against a state-of-the-art competitor and two well-known textual similarity approaches, and (ii) with two case studies, i.e. private company technical assistance reports and a benchmark dataset for semantic textual similarity. With respect to the state-of-the-art, the proposed approach results in comparable retrieval performance and significantly lower management cost: 30-min questionnaires are sufficient to obtain the semantic context knowledge to be injected into our textual search engine.


AI Magazine ◽  
2016 ◽  
Vol 37 (2) ◽  
pp. 63-75
Author(s):  
Sathappan Muthiah ◽  
Bert Huang ◽  
Jaime Arredondo ◽  
David Mares ◽  
Lise Getoor ◽  
...  

Civil unrest events (protests, strikes, and “occupy” events) are common occurrences in both democracies and authoritarian regimes. The study of civil unrest is a key topic for political scientists as it helps capture an important mechanism by which citizenry express themselves. In countries where civil unrest is lawful, qualitative analysis has revealed that more than 75 percent of the protests are planned, organized, or announced in advance; therefore detecting references to future planned events in relevant news and social media is a direct way to develop a protest forecasting system. We report on a system for doing that in this article. It uses a combination of keyphrase learning to identify what to look for, probabilistic soft logic to reason about location occurrences in extracted results, and time normalization to resolve future time mentions. We illustrate the application of our system to 10 countries in Latin America: Argentina, Brazil, Chile, Colombia, Ecuador, El Salvador, Mexico, Paraguay, Uruguay, and Venezuela. Results demonstrate our successes in capturing significant societal unrest in these countries with an average lead time of 4.08 days. We also study the selective superiorities of news media versus social media (Twitter, Facebook) to identify relevant trade-offs.


2020 ◽  
Author(s):  
Nina Poerner ◽  
Ulli Waltinger ◽  
Hinrich Schütze

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