I am writing some Python code to implement some of the concepts I have recently been learning, related to inverted indices / postings lists. I'm quite new to Python and am having some trouble understanding its efficiencies in some cases.
Theoretically, creating an inverted index of a set of documents D, each with a unique ID
doc_id should involve:
- Parsing / performing lexical analysis of each document in D
- Removing stopwords, performing stemming etc.
- Creating a list of all
- Sorting the list
- Condensing duplicates into
Step 5 is often carried out by having a dictionary containing the word with meta-data (term frequency, byte offsets) and a pointer to the postings list (list of documents it occurs in). The postings list is often implemented as a data structure which allows efficient random insert, i.e. a linked list.
My problem is that Python is a higher-level language, and direct use of things like memory pointers (and therefore linked lists) seems to be out of scope. I am optimising before profiling because for very large data sets it is already known that efficiency must be maximised to retain any kind of ability to calculate the index in a reasonable time.
Several other posts exist here on SO about Python inverted indices and, like MY current implementation, they use dictionaries mapping keys to lists (or sets). Is one to expect that this method have similar performance to a language which allows direct coding of pointers to linked lists?