Piperic Business Intelligence
similar sites
‹ profile

Sites similar to netabuzz.com

このサイトは芸能・スポーツ・生活・健康・経済などの 話題の情報を動画や記事で学べるまとめサイトです。 · ranked by category · tech stack · backlink co-citation
33match
jijimom.com
芸能ニュース | 気になる芸能人/有名人にまつわる旬な情報をお届け!
0 co-citations6 shared tech2 shared categorypop-culture
32match
divertirme.com
DivertirMe | for YOU who want jump from "NOW"
0 co-citations6 shared tech2 shared categorypop-culture
32match
matomeru7.com
トップページ
1 co-citations6 shared tech1 shared categorypop-culture
32match
medonews.com
MedoNews | 「気になる」をまとめるサイト
1 co-citations6 shared tech1 shared categorypop-culture
31match
bonita55.com
芸能まるわかり - 気になるあの人をを深堀り
0 co-citations5 shared tech2 shared categorypop-culture
31match
maji-cul.com
マジでカルチャー | なんでも気になるネタを更新
0 co-citations6 shared tech2 shared categorypop-culture
31match
bokukko.com
トップページ
1 co-citations6 shared tech1 shared categorypop-culture
30match
eminchi.com
えみんち|えみんちから発信
0 co-citations7 shared tech2 shared categorypop-culture
30match
hanasi-tane.com
はなしたね | 気になる話題やおもしろいもの
0 co-citations5 shared tech2 shared categorypop-culture
30match
jibunsodatelog.com
My BLOG(SAMPLE)|○○について最新トレンドを発信
1 co-citations6 shared tech1 shared categorypop-culture
30match
elek-kan.com
でんきろく | 日々の“なんで?”を集めてみたら、面白かった件
0 co-citations5 shared tech2 shared categorypop-culture
28match
georgewesley.com
芸能サーチ
0 co-citations4 shared tech2 shared categorypop-culture
28match
fever-antenna.com
ふぃばあんてな(*ᐛ ) |
0 co-citations5 shared tech2 shared categorypop-culture
28match
matomethod.com
まとめそっど - 気になる著名人のうわさやアレコレをまとめてお届け!
0 co-citations4 shared tech2 shared categorypop-culture
28match
hanasaku-entame.com
エンタメ桜 | トレンドのニュースや情報をお届けするエンタメサイトです
0 co-citations3 shared tech2 shared categorypop-culture
28match
hito-aji.com
めぇめぇこひつじ - 好き!気になる!をリサーチしてお届け🐑
0 co-citations4 shared tech2 shared categorypop-culture
26match
chamaru-ru.com
wonder目線◎chamaru | 不思議、好奇心を切り取るニュースblog
0 co-citations3 shared tech2 shared categorypop-culture
26match
matometrendline.com
まとめトレンドライン
0 co-citations2 shared tech2 shared categorypop-culture

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.