This has been answered on Stack Overflow itself, ironically (though about the technology itself, of course... not the tag): What is the difference between pyspark.pandas to pandas? which you have already commented on.
From the current top answer there:
PySpark is an interface for Apache Spark in Python. It allows you to write Spark applications using Python and provides the PySpark shell to analyze data in a distributed environment. Pyspark.pandas
is an API that allows you to use pandas functions and operations on "spark data frames".
And from the second answer:
pyspark.pandas is an alternative to pandas, with the same api than pandas. This means you can work with pyspark exactly the same as you work with pandas
for example, to create a dataframe, you use .DataFrame same as with pandas, and use .iloc or .drop_duplicates
[...]
In short, it seems like it lets you write Pandas code (think writing jQuery for JavaScript) directly for/in Spark databases/dataframes. So... that's what the tag is for.