Chavie Lieber

Styles Reporter

Preston's Summary

Chavie Lieber is a Styles Reporter at The Wall Street Journal. She covers a range of topics within beauty and fashion, apparel, and entertainment, frequently exploring themes related to fashion trends, celebrity style, and cultural influences, including figures like Kanye West and the Royal Family. Chavie's work has been featured in The Wall Street Journal.

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Geo Focus

United States (National)

Coverage Attributes:

Beta
Promotional Deal: 28 %
Expert Commentary: 16 %
Profile Feature: 16 %
Event Coverage: 12 %
Press Release: 8 %

Themes Covered:

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Most Recent Topics:

  • Apparel Design
  • Fashion Industry
  • Luxury Goods
  • Celebrities
  • Entertainment News

Pitching Insights

Chavie Lieber's articles predominantly cover lifestyle, beauty, and fashion topics. She often includes expert commentary and profile features in her writing. When reaching out to her, consider offering insights from experts in the lifestyle, beauty, or fashion industries who can provide thoughtful analysis on trends or events within these spaces.

Additionally, Chavie covers promotional deals and event coverage at a significant rate. If you have information about upcoming events related to lifestyle or beauty that might interest her audience, this could be an effective angle for outreach.

Given the broad themes covered without a specific geographic focus noted, pitches should appeal to an international audience interested in lifestyle and fashion trends rather than being region-specific.

This information evolves through artificial intelligence and human feedback. Improve this profile .

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