
Familiarity Engine
The Mere-Exposure Effect and the Psychological Mechanics of How We Learn to Like Things
Elias Thorne(Author)
epubli (Publisher)
1st Edition
Published on 26. February 2026
157 pages
978-3-565-27414-7 (ISBN)
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for ePUB without DRM
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Description
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Why do you end up humming a pop song you initially hated just because it played on the radio every day? Why are consumers willing to pay double for a branded painkiller when the generic version has the exact same chemical makeup? The secret doesn't lie in the quality of the product or the melody of the song. It is driven by a primitive neurological glitch known as the Mere-Exposure Effect.
Discovered by psychologist Robert Zajonc, this principle proves that the human brain is hardwired to automatically develop a preference for things simply because they are familiar. In our evolutionary past, if we encountered a plant or an animal multiple times and it didn't kill us, our brain categorized it as safe and, eventually, likable. Today, modern marketing empires weaponize this exact biological reflex. By bombarding our peripheral vision with logos and jingles, they bypass our critical thinking and manufacture unearned trust.
This sharp marketing psychology guide dissects the mechanics of cognitive ease. It explores how politicians, tech giants, and influencers use relentless repetition to shape public opinion and forge billion-dollar brands out of thin air.
Entrepreneurs and marketers will learn how to ethically harness the power of presence. Master the Familiarity Engine, optimize your brand's visibility, and understand exactly why being seen repeatedly is infinitely more profitable than being perfectly understood.
More details
Edition
1. Auflage
Language
English
File size
0,64 MB
ISBN-13
978-3-565-27414-7 (9783565274147)
Schweitzer Classification
Person
Author
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