Abstract

Wordle Is a popular word game daily provided by the New York Times. In this paper, we make a further data analysis on Wordle by using the time-series model. First, a time series model was built to predict and test the results, and the correlation of word properties with the degree of difficulty was analyzed. Second, we build multiple multivariate regression models, take the percentages of 1,2,3,4,5,6, and X as output variables, find the relationship between word attributes and the percentage of each attempt and make predictions. Finally, words were classified by difficulty based on the extracted attributes and eerie by the resulting model and evaluated for accuracy.

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