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What are People Talking about in #BackLivesMatter and #StopAsianHate? Exploring and Categorizing Twitter Topics Emerged in Online Social Movements through the Latent Dirichlet Allocation Model

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Supplementary Resources

Paper Title: What are People Talking about in #BackLivesMatter and #StopAsianHate? Exploring and Categorizing Twitter Topics Emerging in Online Social Movements through the Latent Dirichlet Allocation Model

Check out the working paper version on arXiv: https://arxiv.org/abs/2205.14725

Figure 1: Common topics between BlackLivesMatter and StopAsianHate, and unique topics in the two movements Figure 1: Common topics between BlackLivesMatter and StopAsianHate, and unique topics in the two movements

Figure 2: Blacklivesmatter: Time Series for Google Trend, Tweet Volume, and Events. The red line illustrated the relative interest on Google for the keywords "black lives matter" in the U.S, whereas the blue line represents tweet volumes, the number of tweets per day, and the red line illustrates google trend scores (Timezone: Universal Time Coordinated) Figure 2: Blacklivesmatter: Time Series for Google Trend, Tweet Volume, and Events. The red line illustrated the relative interest on Google for the keywords "black lives matter" in the U.S, whereas the blue line represents tweet volumes, the number of tweets per day, and the red line illustrates google trend scores (Timezone: Universal Time Coordinated)

Figure 3: Stopasianhate: Time Series for Google Trend, Tweet Volume, and Events (spearman correlation coeffient=0.683, p-value$<$0.001) Figure 3: Stopasianhate: Time Series for Google Trend, Tweet Volume, and Events (spearman correlation coeffient=0.683, p-value$<$0.001)

Figure 4: Sample Dataset Figure 4: Sample Dataset

Figure 5: Time Series for Average Tweet Length (daily) Figure 5: Time Series for Average Tweet Length (daily)

Figure 6: Overall Word Frequency Ranking Figure 6: Overall Word Frequency Ranking

Figure 7: Time Series of Google Trend and Tweet Volume for #BlackLivesMatter and #StopAsianHate Figure 7: Time Series of Google Trend and Tweet Volume for #BlackLivesMatter and #StopAsianHate

Figure 8: Coherence Score of Different Number of Topics for #blacklivesmatter and #stopasianhate Figure 8: Coherence Score of Different Number of Topics for #blacklivesmatter and #stopasianhate

Figure 9: Blacklivesmatter: Networks of top 50 co-occurring words in tweets Figure 9: Blacklivesmatter: Networks of top 50 co-occurring words in tweets

Figure 10: Stopasianhate: Networks of top 50 co-occurring words in tweets Figure 10: Stopasianhate: Networks of top 50 co-occurring words in tweets

Table of Contents

Content URL
Data https://github.com/HCI-Blockchain/Blacklivesmatter/tree/main/Data
Code https://github.com/HCI-Blockchain/Blacklivesmatter/tree/main/code
Figure https://github.com/HCI-Blockchain/Blacklivesmatter/tree/main/figures

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