The Classical test Source For All The Performing, Visual And Literary Arts & Entertainment News

Michael Douglas Divorce Update: Catherine Zeta-Jones Spending to Blame for Split, NOT Cheating? [RUMORS]

Michael Douglas and Catherine Zeta-Jones shocked the world when they announced that they may be seeking a divorce. Rumors are flying over who is to blame for the split. While many tabloids claimed that Michael was cheating, other’s believe that it could be Catherine Zeta-Jones’ out of control spending and shopping.

Catherine loves to shop. At least that’s how it seems from the most recent addition of Star magazine. The popular tabloid is claiming that she has been on a spending streak since publicly announcing her separation from Michael.

According to the tabloid, Catherine bought a Tesla, $300,000 worth of clothes, an $80,000 diamond watch and an assortment of high-end jewelry. A source told the publication that Catherine loves to buy fancy stuff, but insisted that her spending was not the reason for their split:

“Catherine has always loved the finer things, but she’s spending like never before. They have joint accounts, but Michael doesn’t care what she spends.”

This latest revelation comes after nearly every tabloid accused Michael of cheating. Star magazine recently revealed photos of Michael and a young woman vacationing together. A source told the publication:

“At first, everyone thought the woman was Catherine, especially with all the attention Michael was lavishing on her. But it wasn’t. Michael and Catherine are living totally separate lives and are powering full steam ahead with the divorce. She was gorgeous--tall, with long, dark hair pulled back in a braided ponytail and a million dollar smile. Michael seemed to be putting the moves on this woman hard-core. He must be champing at the bit to play the field again.”

We want to hear what you think! Has Catherine’s spending gotten out of control? Was Michael really cheating on his beautiful wife? Tell us your thoughts in the comment field below.

Real Time Analytics