What is meant by contextual error

Triantaphyllou, E. and G. Felici (Eds.), Data Mining and Knowledge Discovery Approaches based on Rule Induction Techniques, Massive Computing Series, Springer, Heidelberg, Germany, pp. 597–628, 2006.

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What is meant by contextual error class 9th?

Answer: Explanation: A contextual spelling error occurs when the wrong word is used but the word is spelled correctly. For example, if you write Deer Mr. Theodore at the beginning of a letter, deer is a contextual spelling error because dear should have been used.

Which line indicates a contextual error?

The blue line indicates a contextual spelling error. These errors are indicated by colored wavy lines. The red line indicates a misspelled word. The green line indicates a grammatical error.

What is the spelling error?

(ˈspɛlɪŋ ˈɛrə ) an error in the conventionally accepted form of spelling a word.