The Emotion Thesaurus: A Writer's Guide to Character Expression (Second Edition) is widely recognized as an invaluable resource for fiction writers seeking to enhance their emotional storytelling. Reviewers praise its comprehensive list of emotions, physical responses, and internal reactions, making it easier to show rather than tell how characters feel. Many authors find it essential for overcoming writer's block and expanding their emotional vocabulary. While some mention navigation challenges, the overall consensus is that this thesaurus is a must-have for aspiring and seasoned writers alike. Its practical approach and rich content provide writers with the tools needed to convey complex emotions effectively across various narratives.
Source: Amazon Product Reviews of The Emotion Thesaurus: A Writer's GuideStarting from $18, you can purchase the complete report, offering advanced filters, buyer personas, and SWOT analysis, with Excel, PDF and PowerPoint exports.
Unlock the power of emotional storytelling with our in-depth analysis of The Emotion Thesaurus reviews.
I use the book for references for emotions. It is a great book to have.
She really liked her gift, it was exactly what she wanted!
I’m a writer - helpful
Immensely helpful
I use this book all them time when working on my novel. Very good resource.
Thank you for this product! Good service
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This page displays purchase options and a preview of the customer feedback analysis report for The Emotion Thesaurus: A Writer's Guide to Character Expression (Second Edition) (Writers Helping based on online reviews collected from Amazon. The analysis helps Fiction Writers, Screenwriters, Novelists, Creative Writing Teachers, Content Creators to discover insights into what people love, dislike, and need.
This report contains qualitative analysis with Net Promoter Score, Sentiment Analysis, content classification, most popular phrases, languages and a trend graph to display how the context changes over time. After purchasing the report, you can search in customer feedback and filter results based on classification labels and popular phrases. Also, the analysis is available in PDF and PowerPoint formats, and all the reviews are available in Excel.
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