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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.
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