I'm doing an Information Retrieval Task. As part of pre-processing I want to doing.
- Stopword removal
- Stemming (Porter Stemmer)
Initially, I skipped tokenization. As a result I got terms like this:
broker broker' broker, broker. broker/deal broker/dealer' broker/dealer, broker/dealer. broker/dealer; broker/dealers), broker/dealers, broker/dealers. brokerag brokerage, broker-deal broker-dealer, broker-dealers, broker-dealers. brokered. brokers, brokers.
So, Now I realized importance of tokenization. Is there any standard algorithm for tokenization for English language? Based on
string.whitespace and commonly used puncuation marks. I wrote
def Tokenize(text): words = text.split(['.',',', '?', '!', ':', ';', '-','_', '(', ')', '[', ']', '\'', '`', '"', '/',' ','\t','\n','\x0b','\x0c','\r']) return [word.strip() for word in words if word.strip() != '']
- I'm getting
TypeError: coercing to Unicode: need string or buffer, list founderror!
- How can this Tokenization routine be improved?