Features are used for model training and testing. What are the differences between lexical features and orthographic features in Natural Language Processing? Examples preferred.
I am not aware of such a distinction, and most of the time when people talk about lexical features they talk about using the word itself, in contrast to only using other features, ie its part-of-speech.
One could venture that orthographic could mean something more abstract than the sequence of characters themselves, for example whether the sequence is capitalized / titlecased / camelcased / etc. But we already have the useful and clearly understood shape feature denomination for that.
As such, I would recommend distinguishing features like this:
lexical features: whole word, prefix/suffix (various lengths possible), stemmed word, lemmatized word
shape features: uppercase, titlecase, camelcase, lowercase
grammatical and syntactic features: POS, part of a noun-phrase, head of a verb phrase, complement of a prepositional phrase, etc...
This is not an exhaustive list of possible features and feature categories, but it might help you categorizing linguistic features in a clearer and more widely-accepted way.