Current location - Education and Training Encyclopedia - Graduation thesis - A big scarlet letter
A big scarlet letter
The condition of hownet paper detection is that 13 words with similar or plagiarized words will be marked in red, but the following preconditions must be met: the sum of A documents you quoted or plagiarized in each detection paragraph should reach 5%.

HowNet dissertations are tested as a whole article, and the format may have an impact on the test results. It is necessary to submit the final submission format for testing, so as to minimize the impact, and small segments that affect dozens may not be detected. Papers over 30,000 words can be ignored.

The duplicate checking of HowNet is really based on "13 words that are repeated with other articles", which is consistent with what some network authors have said before. If you can change your paper into any sentence and make sure that any consecutive 13 words are different from other articles, HowNet can't find it.

Extended data:

In the detection of hownet paper detection software, the article is divided into chapters based on the catalogue. If there is no table of contents, such as journal articles, it can be directly combined into one chapter for testing. According to different chapters, the paragraphs of the submitted word document are compared with the articles contained in the database.

If you repeat more than thirteen words in a row, you will be judged by HowNet as a part of the paragraph suspected of plagiarism. This principle is applicable to many subsystems of HowNet paper similarity detection software, including PMLC duplicate checking system, AMLC duplicate checking system, SMLC duplicate checking system and so on.

In recent years, hownet's paper detection software has become more and more intelligent, and can automatically handle catalogues, original reports, references and so on. In other words, these parts no longer depend on the detection range of the paper similarity detection software, as long as they are combined.

References:

China Paper Inspection Network Baidu Encyclopedia