Predicting kills in Game of Thrones using network properties

Autor: Stavanja, Jaka, Klemen, Matej, Šubelj, Lovro
Rok vydání: 2019
Předmět:
Zdroj: Uporabna Informatika Vol 28 No 2 (2020), 55-65
Druh dokumentu: Working Paper
Popis: TV series such as HBO's Game of Thrones have seen a high number of dedicated followers, mostly due to the dramatic murders of the most important characters. In our work, we try to predict killer and victim pairs using data about previous kills and additional metadata. We construct a network where two character nodes are linked if one killed the other and use a link prediction framework to evaluate different techniques for kill predictions. Lastly, we compute various network properties on a social network of characters and use them as features in conjunction with classic data mining techniques. Due to the small size of the dataset and the somewhat random kill distribution, we cannot predict much with standard indices alone, although using them in conjunction with additional rules based on degrees works surprisingly well. The features we compute on the social network help the classic machine learning approaches, but do not yield very accurate predictions. The best results overall are achieved using indices that use simple degree information, the best of which gives us the Area Under the ROC Curve of 0.875.
Comment: 8 pages, 4 figures. This article is a replacement for the previous version arXiv:1906.09468v1, which tweaks methods, recalculates results and tries additional approaches. It also provides some additional information about the field of link prediction
Databáze: arXiv