The Quest for the Gist of Jesus: The Jesus Seminar, Dale Allison, and Improper Linear Models

2020 ◽  
Vol 18 (2) ◽  
pp. 156-189
Author(s):  
Sean F. Everton ◽  
Daniel T. Cunningham

Studies have found that while experts can be quite good at identifying criteria related to a particular phenomenon, they are typically outperformed by improper linear models (ilm), which assign equal weights to criteria. In this article, using widely-accepted criteria for assessing the authenticity of the sayings of Jesus, we generate a new ranking of Jesus’ sayings using an ilm. Then, drawing on recent advances in text mining—semantic network analysis—we first compare our ilm ranking to that of the Jesus Seminar’s and then to one based on Dale Allison’s recurrent attestation (RA) approach. We find that our ilm semantic network projects a more traditional understanding of Jesus than does the Jesus Seminar’s, but it is quite similar to the RA network. We conclude by suggesting that biblical scholars could benefit from various forms of computerized text mining in their quest for the historical Jesus.

2021 ◽  
Vol 21 (3) ◽  
pp. 49-60
Author(s):  
Tae Jin Kim ◽  
Mi Ryeong Eum ◽  
Sang Hyun Park

Recently, the government has been increasingly communicating with the public in response to their opinions on state administration and policy projects. To examine the practicality of the public’s suggestions, this study investigated issues by disaster type, based on information from major media channels and comment data from the news. An analysis of the frequency of appearance, text mining (TF-IDF, LDA, and sentiment analysis), and the semantic network was performed by extracting the comment data of articles on the themes of “disaster” and “evacuation,” published from January 2010 to May 2020. The analysis results showed that news articles centered on these themes increased rapidly from 2017. The main disasters in Korea were those of “fire,” “typhoon,” “forest fire,” “radioactivity,” and “earthquake,” in order of enormity. Of the total negative words pertaining to “radioactivity” disasters, 43% were negative-sentiment words, and the semantic network analysis revealed that the terms “typhoon,” “forest fire,” and “earthquake” were connected to “radioactivity” disasters. This study is meaningful as it identifies issues by type of disaster and factors of anxiety expressed by the public using news and comment data, without conducting surveys and interviews.


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