Antispam Help Center Share Add to del.icio.us Send Us Feedback Add This on Your Website Need to encode many addresses? use theautomated spam protectionservice. Getting form spam? tryFormSmarts. Tell Your Friends Your name Your friend's email ...
I understand that legitimate emails are going to "Spam" folder. I extend my sincere apology for the issue caused to you however, please be assured, I will certainly assist you with the right information. Please be informed, our "Spam" feature doesn't put the emails to "Spam" folder unles...
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As the provider of an email marketing service, we take the enforcement of anti-spam laws very seriously. Spam can lead to negative impacts for all our users, so it’s important that your emails comply with applicable laws. As outlined in our Terms of Use, we take many protective measures...
Spam, spammers and spambots Spammers use spambots to crawl the internet looking for email addresses that are used to create emaildistribution lists. The lists are used to send junk emails to multiple email addresses -- usually hundreds of thousands -- at one time. ...
Avoid email content that triggers spam filters The content of your email may be what causes your business to appear on blacklists. Avoid suspicious subject lines, such as those in all caps or with excessive punctuation. Don’t usewords that trigger spam filters, including: ...
Use a double opt-in process for subscribing to your email list. Keep the number of bounced and unsubscribed emails low. Use aprofessional email addressand domain name. Avoid using spam trigger words and phrases. Use a reputable email service provider. ...
At EmailOctopus, we're passionate about making email marketing more accessible and we're dedicated to preventing abuse. Our Acceptable Use Policy tells you more.
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Term Frequency-Inverse Document Frequency (TF-IDF) and Bag of Words (BOW) alongside two machine learning algorithms: Naïve Bayes (NB) and Support Vector Machine (SVM), both widely used as spam email filters. We use five datasets from 2000 to 2010: Ling-Spam, SpamAssassin, Enron-Spam, ...