Shiva Taslimipoor
University of Wolverhampton
Network
Latest external collaboration on country level. Dive into details by clicking on the dots.
Publication
Featured researches published by Shiva Taslimipoor.
north american chapter of the association for computational linguistics | 2015
Hanna Bechara; Hernani Costa; Shiva Taslimipoor; Rohit Gupta; Constantin Orasan; Gloria Corpas Pastor; Ruslan Mitkov
This paper describes the system submitted by the University of Wolverhampton and the University of Malaga for SemEval-2015 Task 2: Semantic Textual Similarity. The system uses a Supported Vector Machine approach based on a number of linguistically motivated features. Our system performed satisfactorily for English and obtained a mean 0.7216 Pearson correlation. However, it performed less adequately for Spanish, obtaining only a mean 0.5158.
Lecture Notes in Computer Science | 2017
Victoria Yaneva; Shiva Taslimipoor; Omid Rohanian; Le An Ha
Gaze data has been used to investigate the cognitive processing of certain types of formulaic language such as idioms and binominal phrases, however, very little is known about the online cognitive processing of multiword expressions. In this paper we use gaze features to compare the processing of verb - particle and verb - noun multiword expressions to control phrases of the same part-of-speech pattern. We also compare the gaze data for certain components of these expressions and the control phrases in order to find out whether these components are processed differently from the whole units. We provide results for both native and non-native speakers of English and we analyse the importance of the various gaze features for the purpose of this study. We discuss our findings in light of the E-Z model of reading.
recent advances in natural language processing | 2017
Omid Rohanian; Shiva Taslimipoor; Victoria Yaneva; Le An Ha
In recent years gaze data has been increasingly used to improve and evaluate NLP models due to the fact that it carries information about the cognitive processing of linguistic phenomena. In this paper we conduct a preliminary study towards the automatic identification of multiword expressions based on gaze features from native and non-native speakers of English. We report comparisons between a part-of-speech (POS) and frequency baseline to: i) a prediction model based solely on gaze data and ii) a combined model of gaze data, POS and frequency. In spite of the challenging nature of the task, best performance was achieved by the latter. Furthermore, we explore how the type of gaze data (from native versus non-native speakers) affects the prediction, showing that data from the two groups is discriminative to an equal degree for the task. Finally, we show that late processing measures are more predictive than early ones, which is in line with previous research on idioms and other formulaic structures.
conference on intelligent text processing and computational linguistics | 2016
Shiva Taslimipoor; Ruslan Mitkov; Gloria Corpas Pastor; Afsaneh Fazly
Due to the limited availability of parallel data in many languages, we propose a methodology that benefits from comparable corpora to find translation equivalents for collocations (as a specific type of difficult-to-translate multi-word expressions). Finding translations is known to be more difficult for collocations than for words. We propose a method based on bilingual context extraction and build a word (distributional) representation model drawing on these bilingual contexts (bilingual English-Spanish contexts in our case). We show that the bilingual context construction is effective for the task of translation equivalent learning and that our method outperforms a simplified distributional similarity baseline in finding translation equivalents.
Proceedings of the 13th Workshop on Multiword Expressions (MWE 2017) | 2017
Shiva Taslimipoor; Omid Rohanian; Ruslan Mitkov; Afsaneh Fazly
This study investigates the supervised token-based identification of Multiword Expressions (MWEs). This is an ongoing research to exploit the information contained in the contexts in which different instances of an expression could occur. This information is used to investigate the question of whether an expression is literal or MWE. Lexical and syntactic context features derived from vector representations are shown to be more effective over traditional statistical measures to identify tokens of MWEs.
language resources and evaluation | 2012
Shiva Taslimipoor; Afsaneh Fazly; Ali Hamzeh
Proceedings of Third Italian Conference on Computational Linguistics (CLiC-it 2016) & Fifth Evaluation Campaign of Natural Language Processing and Speech Tools for Italian. Final Workshop (EVALITA 2016) | 2016
Shiva Taslimipoor; Anna Desantis; Manuela Cherchi; Ruslan Mitkov; Johanna Monti
north american chapter of the association for computational linguistics | 2018
Omid Rohanian; Shiva Taslimipoor; Richard Evans; Ruslan Mitkov
north american chapter of the association for computational linguistics | 2018
Shiva Taslimipoor; Omid Rohanian; Le An Ha; Gloria Corpas Pastor; Ruslan Mitkov
arXiv: Computation and Language | 2018
Shiva Taslimipoor; Omid Rohanian