2025-02-04
Instructions
The goal of this exercise is to create a product to highlight the prediction algorithm that you have built and to provide an interface that can be accessed by others. For this project you must submit:
Data Product
In the shiny app, users can casually key in any character inside text box. The the system will auto appear the suggested next predictive words in table format by follow the most accurate in sequence. You can show/hide the author and source code link if you like.
I am using tm and RWeka packages for previous assignments, but occasionally noticed a new package quanteda which is more efficient and clean, clear and concise and text mining and n-grams words prediction. At the same time I am using shinyjs package to come out with better output and interactive. I’ve removed the graphs while you can refer to if you’ld like to.
You are feel free to browse over the shiny app at ##[Final ##Project-Submission (Shiny App) Input-Prediction.
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