Piperic Business Intelligence
similar sites
‹ profile

Sites similar to apjensen.com

AP Jensen · ranked by category · tech stack · backlink co-citation
55match
joanhewrites.com
Joan He
1 co-citations4 shared tech2 shared categorybooks-and-literature
55match
alkauthor.com
Angela L Keith
1 co-citations4 shared tech2 shared categoryfiction
54match
bookandroom.com
Book and Room
1 co-citations2 shared tech1 shared categorybooks-and-literature
51match
ekrosewrites.com
EK Rose - Author | Romantic Suspense
0 co-citations4 shared tech3 shared categoryfiction
51match
ekrose.com
EK Rose - Author | Romantic Suspense
0 co-citations4 shared tech3 shared categoryfiction
48match
jamieroeske.com
Jam and her TBR Jar - Home
1 co-citations0 shared tech2 shared categorybooks-and-literature
48match
ceclayton.com
Home
1 co-citations0 shared tech2 shared categorybooks-and-literature
48match
dianecsboles.com
Fiction Writer | Diane C.S. Boles, Author
1 co-citations0 shared tech2 shared categoryfiction
48match
elisemcmahon.com
Nick de Blegny Publishing : Home
1 co-citations0 shared tech2 shared categorybooks-and-literature
45match
aabartonauthor.com
A. A. Barton
1 co-citations3 shared tech2 shared categorybooks-and-literature
44match
booksposter.com
BooksPoster - Turn Goodreads profiles into artwork and posters
1 co-citations1 shared tech1 shared categoryart-and-photography
43match
kandrabecerra.com
Kandra Becerra Children's Author
0 co-citations4 shared tech2 shared categorybooks-and-literature
43match
ivettealexander.com
IVETTE ALEXANDER
0 co-citations4 shared tech2 shared categorybooks-and-literature
43match
jackwangauthor.com
JACK WANG
0 co-citations4 shared tech2 shared categoryfiction
43match
aljosephlumen.com
AL JOSEPH LUMEN
0 co-citations4 shared tech2 shared categorybooks-and-literature
43match
greatpeoplebx.com
Great People - Bronx
0 co-citations4 shared tech2 shared categorybooks-and-literature
43match
aditikhorana.com
Aditi Khorana
0 co-citations4 shared tech2 shared categorybooks-and-literature
43match
adrian-silva.com
Adrian Georges Silva
0 co-citations4 shared tech2 shared categorybooks-and-literature

How the match score works

Each match is a 0–100 similarity score — the higher it is, the more two sites resemble one another. It’s computed automatically from our own crawl data (never from what a site says about itself) by combining several independent signals, so a high score means several of them point the same way:

No single signal decides the result — they’re blended together. Treat the score as a way to rank candidates rather than an absolute percentage; the chips on each result show which signals contributed.