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Relevant Journals

Below is a list of journals that I am aware of that are particularly relevant to my Masters Project.


TitlePublisher DescriptionISSN
Computational Linguistics MIT Press Focussed on the design and analysis of natural language processing systems, including the computational aspects of research on language, linguistics, and the psychology of language processing and performance. 0891-2017

IEEE Intelligent Systems IEEE Computer Society A bimonthly journal covering software, tools, techniques, concepts and current research and development work in the broad area of intelligent systems. 1541-1672

Computer Speech and Language Academic Press, London Publishes original research related to the recognition, understanding, production, coding and mining of speech and language. This includes multidisciplinary work, and reports of theoretical or experimental studies, tutorials, and brief correspondence pertaining to models and their implementation, or reports of fundamental research leading to the improvement of such models. 0885-2308 (Print)
1095-8363 (Online)

Journal of Natural Language Engineering Cambridge University Press This journal aims to bridge the gap between traditional computational linguistics research and the implementation of practical applications with potential real-world use. Its coverage includes topics such as text and speech analysis, machine translation, information retrieval and multi-modal interfaces. 1351-3249 (Print)
1469-8110 (Online)

International Journal of Corpus Linguistics John Benjamins Publishing Company This journal presents a wide range of views on the role of corpus linguistics in language research, lexicography, and NLP. 1384-6655 (Print)
1569-9811 (Online)

Journal of Machine Learning Microtome Publishing The Journal of Machine Learning focuses on topics including algorithms for machine learning; experimental and theoretical studies the provide insight into existing techniques or the design and behaviour of learning in intelligent systems; and the formalization of new learning tasks, such as new applications of existing techniques. 1532-4435 (Print)
1533-7928 (Online)