Refine
Document Type
- Bachelor Thesis (1)
- Master's Thesis (1)
Keywords
- Articles for Deletion (1)
- Function Words (1)
- I-messages (1)
- Information Flow Ontology (1)
- Internetregulierung (1)
- Ontologie (1)
- Suchmaschine (1)
- Wikipedia (1)
- You-messages (1)
- information flow regulation (1)
Institute
Polsearchine: Implementation of a policy-based search engine for regulating information flows
(2013)
Many search engines regulate Internet communication in some way. It is often difficult for end users to notice such regulation, as well as obtaining background information for it. Additionally, the regulation can usually be circumvented easily. This bachelor thesis presents the prototypical metasearch engine "Polsearchine" for addressing these weaknesses. Its regulation is established through InFO, a model for regulating information flows developed by Kasten and Scherp. More precisely, the extension for regulating search engines SEFCO is being used. For retrieving search results, Polsearchine uses an external search engine API. The API can be interchanged easily to make this metasearch engine independent from one specific API.
“Did I say something wrong?” A word-level analysis of Wikipedia articles for deletion discussions
(2016)
This thesis focuses on gaining linguistic insights into textual discussions on a word level. It was of special interest to distinguish messages that constructively contribute to a discussion from those that are detrimental to them. Thereby, we wanted to determine whether “I”- and “You”-messages are indicators for either of the two discussion styles. These messages are nowadays often used in guidelines for successful communication. Although their effects have been successfully evaluated multiple times, a large-scale analysis has never been conducted. Thus, we used Wikipedia Articles for Deletion (short: AfD) discussions together with the records of blocked users and developed a fully automated creation of an annotated data set. In this data set, messages were labelled either constructive or disruptive. We applied binary classifiers to the data to determine characteristic words for both discussion styles. Thereby, we also investigated whether function words like pronouns and conjunctions play an important role in distinguishing the two. We found that “You”-messages were a strong indicator for disruptive messages which matches their attributed effects on communication. However, we found “I”-messages to be indicative for disruptive messages as well which is contrary to their attributed effects. The importance of function words could neither be confirmed nor refuted. Other characteristic words for either communication style were not found. Yet, the results suggest that a different model might represent disruptive and constructive messages in textual discussions better.