@inproceedings{, author = {Bäumer, Frederik Simon; Kersting, Joschka; Denisov, Sergej; Geierhos, Michaela}, title = {In other words: A naive approach to text spinning}, editor = {IADIS}, booktitle = {Proceedings of the International Conferences on WWW/Internet 2021 and Applied Computing 2021}, series = {}, journal = {}, address = {}, publisher = {IADIS}, edition = {}, year = {2021}, isbn = {}, volume = {}, number = {}, pages = {221-225}, url = {}, doi = {}, keywords = {Software Requirements ; Natural Language Processing ; Transfer Learning ; On-The-Fly Computing}, abstract = {Content is the new oil. Users consume billions of terabytes a day while surfing on news sites or blogs, posting on social media sites, and sending chat messages around the globe. While content is heterogeneous, the dominant form of web content is text. There are situations where more diversity needs to be introduced into text content, for example, to reuse it on websites or to allow a chatbot to base its models on the information conveyed rather than of the language used. In order to achieve this, paraphrasing techniques have been developed: One example is Text spinning, a technique that automatically paraphrases text while leaving the intent intact. This makes it easier to reuse content, or to change the language generated by the bot more human. One method for modifying texts is a combination of translation and back-translation. This paper presents NATTS, a naive approach that uses transformer-based translation models to create diversified text, combining translation steps in one model. An advantage of this approach is that it can be fine-tuned and handle technical language.}, note = {}, institution = {Universität der Bundeswehr München, Fakultät für Informatik, INF 7 - Institut für Datensicherheit, Professur: Geierhos, Michaela}, }