Evaluating Cultural Impact in Discursive Space through Digital Footprints
Abstract
:1. Introduction
1.1. Digital Traces of Discursive Space
1.2. Domplatz Square and SmartSquare Project
1.3. Objectives of This Work
2. Materials and Methods
2.1. Data Collection, Filtering, and Preprocessing
2.1.1. Preprocessing Pipeline
- Filtering domain-specific stopwords: Stopwords were filtered out in order to eliminate the most common terms in a language (e.g., “the”, “a”, “and”), which contain no semantic information thus have no influence on the topic identification and modeling.
- Detection of phrases: the NLP pipeline was designed to work with words as independent entities. However, some case-specific phrases composed of more than one word were considered. To do so, a separate training process took a manually-generated set of the most common phrases expected to appear, in order to identify them as such.
- Identification and classification of emojis and emoticons as (1) emotion or sentiment, (2) action or activity, (3) other. The first two categories were integrated within separate processes of mood extraction and activity detection.
- Detection and grammatical categorization of “clusterable” words: following part-of-speech tagging (POS-tagging) procedures in which each term was attached to a grammatical category determined by its own definition and its contexts within the sentence.
- “Clusterable words”: A list of terms with semantic load and able to be clustered, and their grammatical category, i.e., adjective, verb, and noun.
- Sentiment: Main polarity of the overall opinion—i.e., positive, negative or neutral—present in the text, extracted following standardized sentiment analysis protocol integrated into NLP.
- Mood: Main polarity of the overall emotion—i.e., positive, negative or neutral—present in the text, extracted from a pre-set classification of emojis and emoticons extracted from the open-source library Emojipedia [20].
- Activities: A joint list of verbs generated by POS-tagging procedures, along with the textual translation of the emojis and emoticons portraying activity or action.
- Hashtags used in the post.
- Language in which the text was written, filtering only English and German posts (case-specific process).
- URLs links included in the text.
- Date and time in which the post was generated by the user.
- Numeric ID generated as a random integer for username to ensure anonymization.
- The social network in which the post was generated, Twitter or Instagram.
2.1.2. Topic Modeling
2.1.3. Expert Terms
2.2. Top Expert-Term Set Selection
2.3. Artificial Topic Construction and Tracking
3. Results
3.1. Activity in Social Media
3.2. Topic Detection and Validation
3.3. Long-Term Topic Tracking
4. Discussion
4.1. Theoretical Implications
4.2. Implications for the Urban Practice
5. Conclusions
5.1. Temporal Activity Patterns
5.2. Detecting and Tracking the Cultural Discourse
5.3. Did the Interventions in Domplatz Make an Impact on the Urban Scale?
5.4. Limitations and Future Directions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Week | Event | Total Social Media Posts | Human-Generated % |
---|---|---|---|
Week 41—2017 | Hammabot 1 | 22,218 | 72.06% |
Week 42—2017 | Hammabot | 45,626 | 80.99% |
Week 23—2018 | Scr.2 Backhus | 82,404 | 65.24% |
Week 24—2018 | Scr. Backhus | 83,469 | 63.19% |
Week 38—2018 | Audio Tour | 90,787 | 60.63% |
Week 39—2018 | Audio Tour | 58,161 | 88.73% |
Week 13—2019 | Scr. Bürgerstiftung | 70,618 | 85.25% |
Week 14—2019 | Scr. Bürgerstiftung | 68,344 | 85.13% |
Week 20—2019 | LNDM 3 | 61,369 | 84.84% |
Week 11—2018 | (control week) | 126,647 | 66.65% |
Week 43—2018 | (control week) | 8536 | 61.55% |
Week 45—2018 | (control week) | 8111 | 64.73% |
Week 21—2019 | LNDM | 29,314 | 83.05% |
Week 44—2018 | (control week) | 7985 | 60.59% |
Week 16—2018 | LNDM | 82,508 | 69.12% |
Week 17—2018 | LNDM | 82,616 | 66.73% |
Topic | Number of Posts | Number of Expert Terms | Ratio of Expert Terms/Post | Relevance Cluster |
---|---|---|---|---|
1 | 7070 | 490 | 6.93% | 2 (relevant) |
2 | 3616 | 30 | 0.83% | 3 |
3 | 2915 | 230 | 7.89% | 1 (relevant) |
4 | 2666 | 16 | 0.60% | 3 |
5 | 6018 | 14 | 0.23% | 3 |
6 | 3286 | 1 | 0.03% | 3 |
7 | 2613 | 0 | 0.00% | 3 |
8 | 3190 | 18 | 0.56% | 3 |
9 | 1787 | 2 | 0.11% | 3 |
10 | 1838 | 5 | 0.27% | 3 |
No Topic | 10,298 | 1 | 0.01% | 3 |
Topic 1—Relevant | Topic 2—Non-Relevant | No Topic | |||
---|---|---|---|---|---|
Social Media | Artificially Generated | Social Media | Artificially Generated | Social Media | |
Week 11—2018 | 56 | 207 | 251 | 261 | 86 |
Week 43—2018 | 221 | 455 | 196 | 14 | 28 |
Week 45—2018 | 232 | 439 | 180 | 30 | 57 |
Source | Reference Week to Model Against | Topic | Number of Posts | Number Expert Terms | Ratio of Expert Terms/Post | Relevant is Highest |
---|---|---|---|---|---|---|
week2018-11 | artificial-week2018-43 | Relevant | 28,321 | 554 | 1.96% | TRUE |
week2018-11 | artificial-week2018-43 | Non-relevant | 23,808 | 142 | 0.60% | |
week2018-11 | artificial-week2018-43 | No Topic | 20,756 | 18 | 0.09% | |
week2018-16 | artificial-week2018-43 | Relevant | 23,405 | 1748 | 7.47% | TRUE |
week2018-16 | artificial-week2018-43 | Non-relevant | 14,100 | 1 | 0.01% | |
week2018-16 | artificial-week2018-43 | No Topic | 12,276 | 4 | 0.03% | |
week2018-17 | artificial-week2018-43 | Relevant | 19,847 | 686 | 3.46% | TRUE |
week2018-17 | artificial-week2018-43 | Non-relevant | 16,941 | 397 | 2.34% | |
week2018-17 | artificial-week2018-43 | No Topic | 11,398 | 13 | 0.11% | |
week2018-23 | artificial-week2018-43 | Relevant | 19,173 | 326 | 1.70% | FALSE |
week2018-23 | artificial-week2018-43 | Non-relevant | 16,550 | 399 | 2.41% | |
week2018-23 | artificial-week2018-43 | No Topic | 10,963 | 2 | 0.02% |
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López Baeza, J.; Bley, J.; Hartkopf, K.; Niggemann, M.; Arias, J.; Wiedenhöfer, A. Evaluating Cultural Impact in Discursive Space through Digital Footprints. Sustainability 2021, 13, 4043. https://doi.org/10.3390/su13074043
López Baeza J, Bley J, Hartkopf K, Niggemann M, Arias J, Wiedenhöfer A. Evaluating Cultural Impact in Discursive Space through Digital Footprints. Sustainability. 2021; 13(7):4043. https://doi.org/10.3390/su13074043
Chicago/Turabian StyleLópez Baeza, Jesús, Jens Bley, Kay Hartkopf, Martin Niggemann, James Arias, and Anais Wiedenhöfer. 2021. "Evaluating Cultural Impact in Discursive Space through Digital Footprints" Sustainability 13, no. 7: 4043. https://doi.org/10.3390/su13074043
APA StyleLópez Baeza, J., Bley, J., Hartkopf, K., Niggemann, M., Arias, J., & Wiedenhöfer, A. (2021). Evaluating Cultural Impact in Discursive Space through Digital Footprints. Sustainability, 13(7), 4043. https://doi.org/10.3390/su13074043