Electoral Programs of German Parties 2021: A Computational Analysis Of Their Comprehensibility and Likeability Based On SentiArt

09/26/2021
by   Arthur M. Jacobs, et al.
0

The electoral programs of six German parties issued before the parliamentary elections of 2021 are analyzed using state-of-the-art computational tools for quantitative narrative, topic and sentiment analysis. We compare different methods for computing the textual similarity of the programs, Jaccard Bag similarity, Latent Semantic Analysis, doc2vec, and sBERT, the representational and computational complexity increasing from the 1st to the 4th method. A new similarity measure for entire documents derived from the Fowlkes Mallows Score is applied to kmeans clustering of sBERT transformed sentences. Using novel indices of the readability and emotion potential of texts computed via SentiArt (Jacobs, 2019), our data shed light on the similarities and differences of the programs regarding their length, main ideas, comprehensibility, likeability, and semantic complexity. Among others, they reveal that the programs of the SPD and CDU have the best chances to be comprehensible and likeable -all other things being equal-, and they raise the important issue of which similarity measure is optimal for comparing texts such as electoral programs which necessarily share a lot of words. While such analyses can not replace qualitative analyses or a deep reading of the texts, they offer predictions that can be verified in empirical studies and may serve as a motivation for changing aspects of future electoral programs potentially making them more comprehensible and/or likeable.

READ FULL TEXT

page 8

page 11

research
03/11/2017

A German Corpus for Text Similarity Detection Tasks

Text similarity detection aims at measuring the degree of similarity bet...
research
01/12/2022

Computational analyses of the topics, sentiments, literariness, creativity and beauty of texts in a large Corpus of English Literature

The Gutenberg Literary English Corpus (GLEC, Jacobs, 2018a) provides a r...
research
05/16/2014

Distributed Representations of Sentences and Documents

Many machine learning algorithms require the input to be represented as ...
research
01/09/2022

Semantic and sentiment analysis of selected Bhagavad Gita translations using BERT-based language framework

It is well known that translations of songs and poems not only breaks rh...
research
12/23/2020

Analysis of co-authorship networks among Brazilian graduate programs in computer science

The growth and popularization of platforms on scientific production have...
research
10/21/2020

Quasi Error-free Text Classification and Authorship Recognition in a large Corpus of English Literature based on a Novel Feature Set

The Gutenberg Literary English Corpus (GLEC) provides a rich source of t...
research
11/28/2016

Analyzing Features for the Detection of Happy Endings in German Novels

With regard to a computational representation of literary plot, this pap...

Please sign up or login with your details

Forgot password? Click here to reset