Washer: Technical Documentation
Non-developer docs mapping Washer: No-code Online Tool for Text Data Cleaning
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Non-developer docs mapping Washer: No-code Online Tool for Text Data Cleaning
Cleaning text data calls for specific programming knowledge. Washer makes it simple for both developers and non-technical users
Python tutorial for reproducible labeling of cutting-edge topic models with GPT4-o-mini.
Python tutorial for evaluating top-notch bigram topic models in customer email classification
Hands-on tutorial explaining how to create an Animated Word Cloud of bigram frequencies to display a text dataset in an MP4 video
Hands-on tutorial on modeling political statements with a state-of-the-art transformer-based topic model
Product reviews are an excellent source of information for qualified management decisions. Learn more about the right text mining techniques.
Arabica now offers a structural break and sentiment analysis module to enrich time-series text mining
Arabica now offers unigram, bigram, and trigram word cloud, heatmap, and line chart to further accelerate time-series text data analysis
Contour plots are simple and very useful graphics for word embedding visualization. This end-to-end tutorial uses IMDb data to illustrate coding in Python.
A comparison of two cutting-edge dynamic topic models solving consumer complaints classification exercise
Animated word clouds turn classic word clouds into a dynamic visualization. Learn more about telling data stories in Python.
Discover how to visualize text networks in the circular, radial, and matrix forms: circos, hive, and matrix plots. At the same time, learn the dos and don’ts of plotting text networks.
A concise, methodical guide, from research question definition to network structure estimation.
Text network analysis belongs to the broader skill set of most text data-oriented analysts.
Explore n-gram word cloud, chord diagram, and a bubble chart, and their implementation in Python
Python tutorial on preparing animated word clouds that make a word frequency presentation stunning