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Rain Dove Sent Asia Argento Texts To Police Because 'They Were Not Going To Follow Their Own Ethics'

Rain Dove Sent Asia Argento Texts To Police Because 'They Were Not Going To Follow Their Own Ethics' Earlier this week, Rose McGowan released a detailed statement regarding recent allegations that Asia Argento sexually assaulted a former underage co-star. McGowan explained that the person she's dating, gender-nonconforming model and activist Rain Dove, was the one whose text messages with Argento—in which she seemingly admitted to having sex with Jimmy Bennett while he was underage—were leaked by TMZ. Dove has now issued their own statement explaining their role in all this: "When [Argento] made it clear that they were not going to be honest about their engagement, I turned in materials that may contribute towards an honest investigation. All victims deserve justice. Justice can rarely exist without honesty." [ more › ] Gothamist https://ift.tt/2LJ0ZjU August 30, 2018 at 07:52PM

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