Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I have a large list of strings which include whitespaces in them (e.g. "New York", "United States", "North Carolina", "United Arab Emirates", "United Kingdom of Great Britain and Northern Ireland" ...and around 5000+ such strings).

And I have a large text in which may include any of these these strings (e.g. "I went to New York on my way to North Carolina, and eventually will be going to United Arab Emirates.")

What is the best way to efficiently use regular expression to detect the presence of these strings within my text?

Or maybe should I think about it the other way around, such that I extract bigrams from the text and see which strings within this list match these bigrams?


EDIT:

After an interesting discussion with VoronoiPotato, I began to think that it is better to index all the tokens of the items of the large string list, and I managed to do this with the function:

def indexing_list(li):
    index_dict={}
    for i in rl(li):
        words=li[i].split()
        for j in rl(words):
            index=complex(i,j)
            word=words[j].lower()
            try:
                index_dict[word].append(index)
            except:
                index_dict[word]=[index]
    return index_dict

And tried with this list:

[u'United Kingdom of Great Britain and Northern Ireland', u'Democratic People\u2019s Republic of Korea', u'Democratic Republic of the Congo', u'Lao People\u2019s Democratic Republic', u'Saint Vincent and the Grenadines', u'United Republic of Tanzania', u'Iran (Islamic Republic of)', u'Central African Republic', u'Islamic Republic of Iran', u'United States of America', u'Bosnia and Herzegovina', u'Libyan Arab Jamahiriya', u'Saint Kitts and Nevis', u'Sao Tome and Principe', u'Syrian Arab Republic', u'United Arab Emirates', u'Antigua and Barbuda', u'Trinidad and Tobago', u'Dominican Republic', u'Russian Federation', u'Brunei Darussalam', u'Equatorial Guinea', u'Republic of Korea', u'Marshall Islands', u'Papua New Guinea', u'Solomon Islands', u'ComodRivadavia', u'Port-au-Prince', u'DumontDUrville', u'Czech Republic', u'United Kingdom', u'Dar es Salaam', u'Cambridge Bay', u'Coral Harbour', u'Port of Spain', u'Santo Domingo', u'St Barthelemy', u'Swift Current', u'Ujung Pandang', u'Yekaterinburg', u'South Georgia', u'C\xf4te d\u2019Ivoire', u"Cote d'Ivoire", u'Guinea-Bissau', u'Liechtenstein', u'United States', u'Johannesburg', u'Buenos Aires', u'Rio Gallegos', u'Blanc-Sablon', u'Campo Grande', u'Danmarkshavn', u'Dawson Creek', u'Indianapolis', u'North Dakota', u'Rankin Inlet', u'Scoresbysund', u'Longyearbyen', u'Kuala Lumpur', u'Antananarivo', u'Port Moresby', u'Burkina Faso', u'Saudi Arabia', u'Sierra Leone', u'South Africa', u'Turkmenistan', u'Addis Ababa', u'Brazzaville', u'Ouagadougou', u'El Salvador', u'Los Angeles', u'Mexico City', u'Pangnirtung', u'Porto Velho', u'Puerto Rico', u'Rainy River', u'Tegucigalpa', u'Thunder Bay', u'Yellowknife', u'Ho Chi Minh', u'Krasnoyarsk', u'Novosibirsk', u'Ulaanbaatar', u'Vladivostok', u'Broken Hill', u'Isle of Man', u'Kaliningrad', u'Guadalcanal', u'Afghanistan', u'Cock Island', u'El Salvador', u'Netherlands', u'New Zealand', u'Philippines', u'Saint Lucia', u'Switzerland', u'Timor-Leste', u'Casablanca', u'Libreville', u'Lubumbashi', u'Nouakchott', u'Porto-Novo', u'Costa Rica', u'Fort Wayne', u'Grand Turk', u'Guadeloupe', u'Hermosillo', u'Petersburg', u'Louisville', u'Monticello', u'Martinique', u'Montevideo', u'Montserrat', u'Paramaribo', u'Porto Acre', u'Rio Branco', u'St Vincent', u'Whitehorse', u'Antarctica', u'South Pole', u'Choibalsan', u'Phnom Penh', u'Ulan Bator', u'Cape Verde', u'Queensland', u'Yancowinna', u'Bratislava', u'Copenhagen', u'Luxembourg', u'San Marino', u'Simferopol', u'Zaporozhye', u'Kiritimati', u'Yugoslavia', u'Azerbaijan', u'Bangladesh', u'Cape Verde', u'Costa Rica', u'Kazakhstan', u'Kyrgyzstan', u'Luxembourg', u'Madagascar', u'Mauritania', u'Micronesia', u'Montenegro', u'Mozambique', u'San Marino', u'Seychelles', u'Tajikistan', u'Uzbekistan', u'Bujumbura', u'Mogadishu', u'Anchorage', u'Araguaina', u'Catamarca', u'Boa Vista', u'Chihuahua', u'Fortaleza', u'Glace Bay', u'Goose Bay', u'Guatemala', u'Guayaquil', u'Tell City', u'Vincennes', u'Menominee', u'Monterrey', u'New Salem', u'Sao Paulo', u'St Thomas', u'Vancouver', u'Ashkhabad', u'Chongqing', u'Chungking', u'Hong Kong', u'Jerusalem', u'Kamchatka', u'Pontianak', u'Pyongyang', u'Qyzylorda', u'Samarkand', u'Singapore', u'Vientiane', u'Jan Mayen', u'Reykjavik', u'St Helena', u'Australia', u'Lord Howe', u'Melbourne', u'Greenwich', u'Amsterdam', u'Bucharest', u'Gibraltar', u'Ljubljana', u'Mariehamn', u'Podgorica', u'Stockholm', u'Volgograd', u'Christmas', u'Kerguelen', u'Mauritius', u'Enderbury', u'Galapagos', u'Kwajalein', u'Marquesas', u'Pago Pago', u'Rarotonga', u'Tongatapu', u'Argentina', u'Australia', u'Guatemala', u'Indonesia', u'Lithuania', u'Mauritius', u'Nicaragua', u'Singapore', u'Sri Lanka', u'Swaziland', u'Macedonia', u'Venezuela', u'Blantyre', u'Djibouti', u'El Aaiun', u'Freetown', u'Gaborone', u'Khartoum', u'Kinshasa', u'Monrovia', u'Ndjamena', u'Sao Tome', u'Timbuktu', u'Windhoek', u'Anguilla', u'La Rioja', u'San Juan', u'San Luis', u'Asuncion', u'Atikokan', u'Barbados', u'Dominica', u'Edmonton', u'Eirunepe', u'Ensenada', u'Kentucky', u'Mazatlan', u'Miquelon', u'Montreal', u'New York', u'Resolute', u'Santiago', u'Shiprock', u'St Johns', u'St Kitts', u'St Lucia', u'Winnipeg', u'Ashgabat', u'Calcutta', u'Damascus', u'Dushanbe', u'Istanbul', u'Jayapura', u'Katmandu', u'Makassar', u'Sakhalin', u'Shanghai', u'Tashkent', u'Tel Aviv', u'Atlantic', u'Adelaide', u'Brisbane', u'Canberra', u'Lindeman', u'Tasmania', u'Victoria', u'Belgrade', u'Brussels', u'Budapest', u'Chisinau', u'Guernsey', u'Helsinki', u'Sarajevo', u'Tiraspol', u'Uzhgorod', u'Auckland', u'Funafuti', u'Honolulu', u'Johnston', u'Pitcairn', u'Barbados', u'Botswana', u'Bulgaria', u'Cambodia', u'Cameroon', u'Colombia', u'Djibouti', u'Dominica', u'Ethiopia', u'Holy See', u'Honduras', u'Kiribati', u'Malaysia', u'Maldives', u'Mongolia', u'Pakistan', u'Paraguay', u'Portugal', u'Slovakia', u'Slovenia', u'Suriname', u'Thailand', u'Tanzania', u'Viet Nam', u'Zimbabwe', u'Anguilla', u'Abidjan', u'Algiers', u'Conakry', u'Kampala', u'Mbabane', u'Nairobi', u'Tripoli', u'America', u'Antigua', u'Cordoba', u'Mendoza', u'Tucuman', u'Ushuaia', u'Caracas', u'Cayenne', u'Chicago', u'Curacao', u'Detroit', u'Godthab', u'Grenada', u'Halifax', u'Indiana', u'Marengo', u'Winamac', u'Iqaluit', u'Managua', u'Marigot', u'Moncton', u'Nipigon', u'Noronha', u'Phoenix', u'Rosario', u'Tijuana', u'Toronto', u'Tortola', u'Yakutat', u'McMurdo', u'Rothera', u'Baghdad', u'Bahrain', u'Bangkok', u'Bishkek', u'Colombo', u'Irkutsk', u'Jakarta', u'Karachi', u'Kashgar', u'Kolkata', u'Kuching', u'Magadan', u'Nicosia', u'Rangoon', u'Tbilisi', u'Thimphu', u'Yakutsk', u'Yerevan', u'Bermuda', u'Madeira', u'Stanley', u'Andorra', u'Belfast', u'Tallinn', u'Vatican', u'Vilnius', u'Mayotte', u'Reunion', u'Chatham', u'Fakaofo', u'Gambier', u'Norfolk', u'Albania', u'Algeria', u'Armenia', u'Austria', u'Bahamas', u'Bahrain', u'Belarus', u'Belgium', u'Bolivia', u'Burundi', u'Comoros', u'Croatia', u'Denmark', u'Ecuador', u'Eritrea', u'Estonia', u'Finland', u'Georgia', u'Germany', u'Grenada', u'Hungary', u'Iceland', u'Ireland', u'Jamaica', u'Lebanon', u'Lesotho', u'Liberia', u'Morocco', u'Myanmar', u'Namibia', u'Nigeria', u'Moldova', u'Romania', u'Senegal', u'Somalia', u'Tunisia', u'Ukraine', u'Uruguay', u'Vanuatu', u'Asmara', u'Asmera', u'Bamako', u'Bangui', u'Banjul', u'Bissau', u'Douala', u'Harare', u'Kigali', u'Luanda', u'Lusaka', u'Malabo', u'Maputo', u'Maseru', u'Niamey', u'Belize', u'Bogota', u'Cancun', u'Cayman', u'Cuiaba', u'Dawson', u'Denver', u'Havana', u'Inuvik', u'Juneau', u'La Paz', u'Maceio', u'Manaus', u'Merida', u'Nassau', u'Recife', u'Regina', u'Virgin', u'Mawson', u'Palmer', u'Vostok', u'Arctic', u'Almaty', u'Anadyr', u'Aqtobe', u'Beirut', u'Brunei', u'Harbin', u'Kuwait', u'Manila', u'Muscat', u'Riyadh', u'Saigon', u'Taipei', u'Tehran', u'Thimbu', u'Urumqi', u'Azores', u'Canary', u'Faeroe', u'Currie', u'Darwin', u'Hobart', u'Sydney', u'Europe', u'Athens', u'Berlin', u'Dublin', u'Jersey', u'Lisbon', u'London', u'Madrid', u'Geneva', u'Monaco', u'Moscow', u'Prague', u'Samara', u'Skopje', u'Tirane', u'Vienna', u'Warsaw', u'Zagreb', u'Zurich', u'Chagos', u'Comoro', u'Easter', u'Kosrae', u'Majuro', u'Midway', u'Noumea', u'Ponape', u'Saipan', u'Tahiti', u'Tarawa', u'Wallis', u'Andora', u'Angola', u'Belize', u'Bhutan', u'Brazil', u'Canada', u'Cyprus', u'France', u'Gambia', u'Greece', u'Guinea', u'Guyana', u'Israel', u'Jordan', u'Kuwait', u'Latvia', u'Malawi', u'Mexico', u'Monaco', u'Norway', u'Panama', u'Poland', u'Rwanda', u'Serbia', u'Sweden', u'Turkey', u'Tuvalu', u'Uganda', u'Zambia', u'Accra', u'Cairo', u'Ceuta', u'Dakar', u'Lagos', u'Tunis', u'Jujuy', u'Aruba', u'Bahia', u'Belem', u'Boise', u'Vevay', u'Thule', u'Casey', u'Davis', u'Syowa', u'Amman', u'Aqtau', u'Dacca', u'Dhaka', u'Dubai', u'Kabul', u'Macao', u'Macau', u'Qatar', u'Seoul', u'Tokyo', u'Faroe', u'Eucla', u'Perth', u'Malta', u'Minsk', u'Paris', u'Sofia', u'Vaduz', u'Cocos', u'Efate', u'Nauru', u'Palau', u'Samoa', u'Benin', u'Chile', u'China', u'Congo', u'Egypt', u'Gabon', u'Ghana', u'Haiti', u'India', u'Italy', u'Japan', u'Kenya', u'Libya', u'Malta', u'Nauru', u'Nepal', u'Niger', u'Palau', u'Qatar', u'Samoa', u'Spain', u'Sudan', u'Syria', u'Tonga', u'Yemen', u'Lome', u'Adak', u'Atka', u'Nuuk', u'Knox', u'Lima', u'Nome', u'Asia', u'Aden', u'Baku', u'Dili', u'Gaza', u'Hovd', u'Omsk', u'Oral', u'Zulu', u'Kiev', u'Oslo', u'Bonn', u'Riga', u'Rome', u'Mahe', u'Apia', u'Fiji', u'Guam', u'Niue', u'Truk', u'Wake', u'Chad', u'Cuba', u'Fiji', u'Iran', u'Iraq', u'Mali', u'Oman', u'Peru', u'Togo', u'GMT', u'Yap']

And then I started to analyze the text I have:

text='I went to New York and New Orleans and London and United States, Canada, and Egypt, Saudi Arabia'
text_words=text.split()

and tried to investigate each word separately:

for i in rl(text_words):
    tw=text_words[i].lower()
    print i
    print tw
    print index_dict.get(tw)

The methods seems fast, but I'm not sure how to take it further

share|improve this question
1  
Is it necessary to use regexes? Why not just case-insensitively check for these strings? –  Waleed Khan Aug 10 '12 at 13:43
1  
As with all regex questions, you need to flesh out what pattern you are trying to match. Are you looking to match only state/country names as your question implies? –  kevlar1818 Aug 10 '12 at 13:43
1  
@hmghaly How do you think regex works internally? ;) –  Izkata Aug 10 '12 at 13:47
1  
@hmghaly They are data structures that tend to be useful in certain situations. A graph is a vague data structure in which elements are connected (either one-way or both-ways). A trie is an implementation of a graph that could be used to break down your list into a more searchable version (maybe; I'm not good with this sort of thing). –  Waleed Khan Aug 10 '12 at 13:59
1  
hmm I don't think you understood what I meant when I said index, this can be made much faster. You don't need the I or J next to the country name, as the structure of the object will maintain if you compose the objects correctly. [[{hash('United'):'United'},{hash('States'):'States'}],[{hash('Bolivia'):'Bolivi‌​a'}]] By composing the objects this way with a unique key (and it's associated value) it allows us to near instantly compare strings. –  VoronoiPotato Aug 10 '12 at 17:37
show 17 more comments

6 Answers

whitespaces_list=['New York','United States', 'United Arab Emirates']
large_text="I went to New York on my way to North Carolina, and eventually will be going to United Arab Emirates."
for i in whitespaces_list:
    if i in large_text:
        print i," Exist in Large text"

are you looking for something like this ?

share|improve this answer
    
Well this is a bit too simple, and probably will not be efficient enough for a very large list... –  hmghaly Aug 10 '12 at 13:48
    
@hmghaly Regexes aren't magical. They iterate over the list too –  Woody Aug 10 '12 at 13:50
    
@Woody of course, but I believe they are much faster and more effecient... –  hmghaly Aug 10 '12 at 13:55
    
sure but they don't have to check every single letter, just enough to fulfill the requirement of the regex. That being said a regex for this probably would need to check every letter. –  VoronoiPotato Aug 10 '12 at 13:56
    
@VoronoiPotato maybe not exactly every character, we can just check at each word boundary the first character and if the following string is in the list, and know where the string ends, and start from this point... I know there is this look ahead in regex but I'm not actually sure how to use it.. –  hmghaly Aug 10 '12 at 14:01
add comment

Use a regex that checks for uppercase words in the text. That will GREATLY reduce the amount of time spent checking

[A-Z][a-z]*

Once you get a match, (an uppercase word) check if that matches first words your list, if yes, line up the next match with the second word in the list until you have a total match.

share|improve this answer
    
This looks like a helpful idea, I'm still looking for more such ideas, thank you :) –  hmghaly Aug 10 '12 at 14:10
1  
More ideas, look for consecutive capital lettered words many countries are more than one word, whereas few proper nouns are more than one word, Ex: Chad, or Stephen. –  VoronoiPotato Aug 10 '12 at 14:15
    
looks good too.. –  hmghaly Aug 10 '12 at 14:18
    
Since your list of predefined words is larger than the text, you might also benefit from generating a very simple hash and associating it with each item in the wordlist. When I say very simple I mean like 4 byte hash. Then run the same hash on each set of consecutive capital words. If the hash doesn't match any of the hashes in your dictionary then it's not in there. –  VoronoiPotato Aug 10 '12 at 14:30
1  
I like where this discussion is going..probably it might be a good idea after all to index every token within each list item and assign a unique index in it and then tokenize the text that we want to search and get the corresponding indexes and identify the consecutive ones found, can this be an option? –  hmghaly Aug 10 '12 at 15:11
show 8 more comments

As most poeple said, it depends of your text and city list, and using timeit to compare methods is the best way to choose which way to go:

list = ['New York','United States', 'United Arab Emirates']
text = "I went to New York on my way to North Carolina, and eventually will be going to United Arab Emirates."

Timing with 1,000,000 loops and 5 repettions for each loop

timeit -n 1000000 -r 5 re.findall(token_regex, text)
1000000 loops, best of 5: 6.22 us per loop

timeit -n 1000000 -r 5 filter(lambda x: x in text, token_list)
1000000 loops, best of 5: 2.76 us per loop

def somefunc():
    for i in token_list:
        if i in text:
            pass

timeit -n 1000000 -r 5 somefunc()
1000000 loops, best of 5: 1.68 us per loop


t = [hash(x) for x in text.replace('.', '').replace(',','').split()] 
tl = [hash(x) for x in token_list]# this list contains single words, like "New" and "York" but not "New York"

def SomeFunc2():
    for x in tl:
        if x in t:
            pass

timeit -n 1000000 -r 5 SomeFunc2()
1000000 loops, best of 5: 6.26 us per loop

t = set([hash(x) for x in text.replace('.', '').replace(',','').split()])
tl = set(hash(x) for x in token_list])

timeit -n 1000000 -r 5 t.intersection(tl)
1000000 loops, best of 5: 1.75 us per loop

By using your example data, for loop usage looks pretty faster...But as i said, you must make your test with more real time data.

EDIT: Ok, i guess using more real time data is better, so i am re-calculating the result with following data set:

list = [u'United Kingdom of Great Britain and Northern Ireland', u'Democratic People\u2019s Republic of Korea', u'Democratic Republic of the Congo', u'Lao People\u2019s Democratic Republic', u'Saint Vincent and the Grenadines', u'United Republic of Tanzania', u'Iran (Islamic Republic of)', u'Central African Republic', u'Islamic Republic of Iran', u'United States of America', u'Bosnia and Herzegovina', u'Libyan Arab Jamahiriya', u'Saint Kitts and Nevis', u'Sao Tome and Principe', u'Syrian Arab Republic', u'United Arab Emirates', u'Antigua and Barbuda', u'Trinidad and Tobago', u'Dominican Republic', u'Russian Federation', u'Brunei Darussalam', u'Equatorial Guinea', u'Republic of Korea', u'Marshall Islands', u'Papua New Guinea', u'Solomon Islands', u'ComodRivadavia', u'Port-au-Prince', u'DumontDUrville', u'Czech Republic', u'United Kingdom', u'Dar es Salaam', u'Cambridge Bay', u'Coral Harbour', u'Port of Spain', u'Santo Domingo', u'St Barthelemy', u'Swift Current', u'Ujung Pandang', u'Yekaterinburg', u'South Georgia', u'C\xf4te d\u2019Ivoire', u"Cote d'Ivoire", u'Guinea-Bissau', u'Liechtenstein', u'United States', u'Johannesburg', u'Buenos Aires', u'Rio Gallegos', u'Blanc-Sablon', u'Campo Grande', u'Danmarkshavn', u'Dawson Creek', u'Indianapolis', u'North Dakota', u'Rankin Inlet', u'Scoresbysund', u'Longyearbyen', u'Kuala Lumpur', u'Antananarivo', u'Port Moresby', u'Burkina Faso', u'Saudi Arabia', u'Sierra Leone', u'South Africa', u'Turkmenistan', u'Addis Ababa', u'Brazzaville', u'Ouagadougou', u'El Salvador', u'Los Angeles', u'Mexico City', u'Pangnirtung', u'Porto Velho', u'Puerto Rico', u'Rainy River', u'Tegucigalpa', u'Thunder Bay', u'Yellowknife', u'Ho Chi Minh', u'Krasnoyarsk', u'Novosibirsk', u'Ulaanbaatar', u'Vladivostok', u'Broken Hill', u'Isle of Man', u'Kaliningrad', u'Guadalcanal', u'Afghanistan', u'Cock Island', u'El Salvador', u'Netherlands', u'New Zealand', u'Philippines', u'Saint Lucia', u'Switzerland', u'Timor-Leste', u'Casablanca', u'Libreville', u'Lubumbashi', u'Nouakchott', u'Porto-Novo', u'Costa Rica', u'Fort Wayne', u'Grand Turk', u'Guadeloupe', u'Hermosillo', u'Petersburg', u'Louisville', u'Monticello', u'Martinique', u'Montevideo', u'Montserrat', u'Paramaribo', u'Porto Acre', u'Rio Branco', u'St Vincent', u'Whitehorse', u'Antarctica', u'South Pole', u'Choibalsan', u'Phnom Penh', u'Ulan Bator', u'Cape Verde', u'Queensland', u'Yancowinna', u'Bratislava', u'Copenhagen', u'Luxembourg', u'San Marino', u'Simferopol', u'Zaporozhye', u'Kiritimati', u'Yugoslavia', u'Azerbaijan', u'Bangladesh', u'Cape Verde', u'Costa Rica', u'Kazakhstan', u'Kyrgyzstan', u'Luxembourg', u'Madagascar', u'Mauritania', u'Micronesia', u'Montenegro', u'Mozambique', u'San Marino', u'Seychelles', u'Tajikistan', u'Uzbekistan', u'Bujumbura', u'Mogadishu', u'Anchorage', u'Araguaina', u'Catamarca', u'Boa Vista', u'Chihuahua', u'Fortaleza', u'Glace Bay', u'Goose Bay', u'Guatemala', u'Guayaquil', u'Tell City', u'Vincennes', u'Menominee', u'Monterrey', u'New Salem', u'Sao Paulo', u'St Thomas', u'Vancouver', u'Ashkhabad', u'Chongqing', u'Chungking', u'Hong Kong', u'Jerusalem', u'Kamchatka', u'Pontianak', u'Pyongyang', u'Qyzylorda', u'Samarkand', u'Singapore', u'Vientiane', u'Jan Mayen', u'Reykjavik', u'St Helena', u'Australia', u'Lord Howe', u'Melbourne', u'Greenwich', u'Amsterdam', u'Bucharest', u'Gibraltar', u'Ljubljana', u'Mariehamn', u'Podgorica', u'Stockholm', u'Volgograd', u'Christmas', u'Kerguelen', u'Mauritius', u'Enderbury', u'Galapagos', u'Kwajalein', u'Marquesas', u'Pago Pago', u'Rarotonga', u'Tongatapu', u'Argentina', u'Australia', u'Guatemala', u'Indonesia', u'Lithuania', u'Mauritius', u'Nicaragua', u'Singapore', u'Sri Lanka', u'Swaziland', u'Macedonia', u'Venezuela', u'Blantyre', u'Djibouti', u'El Aaiun', u'Freetown', u'Gaborone', u'Khartoum', u'Kinshasa', u'Monrovia', u'Ndjamena', u'Sao Tome', u'Timbuktu', u'Windhoek', u'Anguilla', u'La Rioja', u'San Juan', u'San Luis', u'Asuncion', u'Atikokan', u'Barbados', u'Dominica', u'Edmonton', u'Eirunepe', u'Ensenada', u'Kentucky', u'Mazatlan', u'Miquelon', u'Montreal', u'New York', u'Resolute', u'Santiago', u'Shiprock', u'St Johns', u'St Kitts', u'St Lucia', u'Winnipeg', u'Ashgabat', u'Calcutta', u'Damascus', u'Dushanbe', u'Istanbul', u'Jayapura', u'Katmandu', u'Makassar', u'Sakhalin', u'Shanghai', u'Tashkent', u'Tel Aviv', u'Atlantic', u'Adelaide', u'Brisbane', u'Canberra', u'Lindeman', u'Tasmania', u'Victoria', u'Belgrade', u'Brussels', u'Budapest', u'Chisinau', u'Guernsey', u'Helsinki', u'Sarajevo', u'Tiraspol', u'Uzhgorod', u'Auckland', u'Funafuti', u'Honolulu', u'Johnston', u'Pitcairn', u'Barbados', u'Botswana', u'Bulgaria', u'Cambodia', u'Cameroon', u'Colombia', u'Djibouti', u'Dominica', u'Ethiopia', u'Holy See', u'Honduras', u'Kiribati', u'Malaysia', u'Maldives', u'Mongolia', u'Pakistan', u'Paraguay', u'Portugal', u'Slovakia', u'Slovenia', u'Suriname', u'Thailand', u'Tanzania', u'Viet Nam', u'Zimbabwe', u'Anguilla', u'Abidjan', u'Algiers', u'Conakry', u'Kampala', u'Mbabane', u'Nairobi', u'Tripoli', u'America', u'Antigua', u'Cordoba', u'Mendoza', u'Tucuman', u'Ushuaia', u'Caracas', u'Cayenne', u'Chicago', u'Curacao', u'Detroit', u'Godthab', u'Grenada', u'Halifax', u'Indiana', u'Marengo', u'Winamac', u'Iqaluit', u'Managua', u'Marigot', u'Moncton', u'Nipigon', u'Noronha', u'Phoenix', u'Rosario', u'Tijuana', u'Toronto', u'Tortola', u'Yakutat', u'McMurdo', u'Rothera', u'Baghdad', u'Bahrain', u'Bangkok', u'Bishkek', u'Colombo', u'Irkutsk', u'Jakarta', u'Karachi', u'Kashgar', u'Kolkata', u'Kuching', u'Magadan', u'Nicosia', u'Rangoon', u'Tbilisi', u'Thimphu', u'Yakutsk', u'Yerevan', u'Bermuda', u'Madeira', u'Stanley', u'Andorra', u'Belfast', u'Tallinn', u'Vatican', u'Vilnius', u'Mayotte', u'Reunion', u'Chatham', u'Fakaofo', u'Gambier', u'Norfolk', u'Albania', u'Algeria', u'Armenia', u'Austria', u'Bahamas', u'Bahrain', u'Belarus', u'Belgium', u'Bolivia', u'Burundi', u'Comoros', u'Croatia', u'Denmark', u'Ecuador', u'Eritrea', u'Estonia', u'Finland', u'Georgia', u'Germany', u'Grenada', u'Hungary', u'Iceland', u'Ireland', u'Jamaica', u'Lebanon', u'Lesotho', u'Liberia', u'Morocco', u'Myanmar', u'Namibia', u'Nigeria', u'Moldova', u'Romania', u'Senegal', u'Somalia', u'Tunisia', u'Ukraine', u'Uruguay', u'Vanuatu', u'Asmara', u'Asmera', u'Bamako', u'Bangui', u'Banjul', u'Bissau', u'Douala', u'Harare', u'Kigali', u'Luanda', u'Lusaka', u'Malabo', u'Maputo', u'Maseru', u'Niamey', u'Belize', u'Bogota', u'Cancun', u'Cayman', u'Cuiaba', u'Dawson', u'Denver', u'Havana', u'Inuvik', u'Juneau', u'La Paz', u'Maceio', u'Manaus', u'Merida', u'Nassau', u'Recife', u'Regina', u'Virgin', u'Mawson', u'Palmer', u'Vostok', u'Arctic', u'Almaty', u'Anadyr', u'Aqtobe', u'Beirut', u'Brunei', u'Harbin', u'Kuwait', u'Manila', u'Muscat', u'Riyadh', u'Saigon', u'Taipei', u'Tehran', u'Thimbu', u'Urumqi', u'Azores', u'Canary', u'Faeroe', u'Currie', u'Darwin', u'Hobart', u'Sydney', u'Europe', u'Athens', u'Berlin', u'Dublin', u'Jersey', u'Lisbon', u'London', u'Madrid', u'Geneva', u'Monaco', u'Moscow', u'Prague', u'Samara', u'Skopje', u'Tirane', u'Vienna', u'Warsaw', u'Zagreb', u'Zurich', u'Chagos', u'Comoro', u'Easter', u'Kosrae', u'Majuro', u'Midway', u'Noumea', u'Ponape', u'Saipan', u'Tahiti', u'Tarawa', u'Wallis', u'Andora', u'Angola', u'Belize', u'Bhutan', u'Brazil', u'Canada', u'Cyprus', u'France', u'Gambia', u'Greece', u'Guinea', u'Guyana', u'Israel', u'Jordan', u'Kuwait', u'Latvia', u'Malawi', u'Mexico', u'Monaco', u'Norway', u'Panama', u'Poland', u'Rwanda', u'Serbia', u'Sweden', u'Turkey', u'Tuvalu', u'Uganda', u'Zambia', u'Accra', u'Cairo', u'Ceuta', u'Dakar', u'Lagos', u'Tunis', u'Jujuy', u'Aruba', u'Bahia', u'Belem', u'Boise', u'Vevay', u'Thule', u'Casey', u'Davis', u'Syowa', u'Amman', u'Aqtau', u'Dacca', u'Dhaka', u'Dubai', u'Kabul', u'Macao', u'Macau', u'Qatar', u'Seoul', u'Tokyo', u'Faroe', u'Eucla', u'Perth', u'Malta', u'Minsk', u'Paris', u'Sofia', u'Vaduz', u'Cocos', u'Efate', u'Nauru', u'Palau', u'Samoa', u'Benin', u'Chile', u'China', u'Congo', u'Egypt', u'Gabon', u'Ghana', u'Haiti', u'India', u'Italy', u'Japan', u'Kenya', u'Libya', u'Malta', u'Nauru', u'Nepal', u'Niger', u'Palau', u'Qatar', u'Samoa', u'Spain', u'Sudan', u'Syria', u'Tonga', u'Yemen', u'Lome', u'Adak', u'Atka', u'Nuuk', u'Knox', u'Lima', u'Nome', u'Asia', u'Aden', u'Baku', u'Dili', u'Gaza', u'Hovd', u'Omsk', u'Oral', u'Zulu', u'Kiev', u'Oslo', u'Bonn', u'Riga', u'Rome', u'Mahe', u'Apia', u'Fiji', u'Guam', u'Niue', u'Truk', u'Wake', u'Chad', u'Cuba', u'Fiji', u'Iran', u'Iraq', u'Mali', u'Oman', u'Peru', u'Togo', u'GMT', u'Yap']

list taken from @hmghaly's example contains 645 countries and cities

text = "Lorem ipsum dolor Turkey sit amet, Brussels consectetur adipisicing elit, sed do Santo Domingo eiusmod tempor incididunt ut labore Tell City et dolore magna aliqua. Ut Goose Bay enim ad minim veniam, Bahrain quis nostrud exercitation New Salem ullamco laboris nisi Mongolia ut aliquip ex ea Yekaterinburg commodo consequat. Chihuahua Duis aute irure dolor in Nouakchott reprehenderit in voluptate velit Ireland esse cillum dolore eu fugiat nulla Lome pariatur. Excepteur sint occaecat San Marino cupidatat non proident, Comoro sunt in culpa qui officia Belem deserunt mollit anim id est laborum"

text slices are classic Lorem ipsum text with randomly placed Country/City names, Final text is the result of concatination of the same text for 51 times, for a total of 4590 words and 30344 letters. (Too long to write it in here, hence it the same text repeating)

Timing is based on 1,000 (previously i tested with 1,000,000 loops) loops with each loop containing 2 repetitions:

Regex

regex = '('+'|'.join(list)+')'
%timeit -n 1000 -r 2 re.findall(regex, text)
1000 loops, best of 2: 3.36 ms per loop

Lambda

%timeit -n 1000 -r 2 filter(lambda x: x in text, list)
1000 loops, best of 2: 140 ms per loop

For loop

def somefunc():
    for i in list:
        if i in text:
            pass

%timeit -n 1000 -r 2 somefunc()
1000 loops, best of 2: 138 ms per loop

Radix Tree

from radix_tree import RadixTree
Tokens = list(set(list))

trie = RadixTree()
for token in Tokens:
    trie.insert(token, token)

def FindMatches(trie, text):
    while 0 < len(text):
        try:
            test = text[:text.index(" ")]
        except ValueError:
            test = text

        for token in trie.search_prefix(test, 100):
            if text.startswith(token):
                pass # no need to print to screen

        try:
            text = text[text.index(" ") + 1:]
        except ValueError:
            break # End of string

%timeit -n 1000 -r 2 FindMatches(trie, text)
1000 loops, best of 2: 236 ms per loop

Set and Regex

def SomeMoreFunc():
    rgx = '([A-Z][A-Za-z]*)' #@VoronoiPotato's approach
    filtered_text = set(re.findall(rgx, text)) #make a set of all words that starts with a capital letter 
    for x in list:
         #we split city name if it is constucted with 2 or more words, and parse it to a set, then check if all parts of the string are in the filtered text. If yes, then our city is within our text body
        if set(x.split()).issubset(filtered_text):
            pass 

%timeit -n 1000 -r 2 SomeMoreFunc()
1000 loops, best of 2: 2.81 ms per loop

I modified @VoronoiPotato's approach with set usage.


Token Indexing

def indexing_list(li):
    index_dict={}
    for i in range(len(li)):
        words=li[i].split()
        for j in range(len(words)):
            index=complex(i,j)
            word=words[j].lower()
            try:
                index_dict[word].append(index)
            except:
                index_dict[word]=[index]
    return index_dict

def someFunc():
    ind_dic = indexing_list(lst)
    text_words=text.split()
    for i in range(len(text_words)):
        tw=text_words[i].lower()
        index_dict.get(tw)


%timeit -n 1000 -r 2 someFunc()
1000 loops, best of 2: 7.41 ms per loop

With new data set, it is clear to use regex instead of simple text search, and set usage will increase performance (by cropping similar words and allowing to use issubset for an easier and faster cmparison). Radix Tree search gives worst result within these approaches. For the previous data set regex usage was worse than text search...

EDIT: Token Indexing results are appended. But, this example only searches for single words, and there is no control with city names with two or more words.

Also, a dangerous bug exists for Set & Regex and Token Indexing methods, Considering city name

El Salvador

and following text:

Salvador Dali lorem ipsum dolor. El Dranges porte quantera. 

both methods will match El Salvador with Salvador and El since theysplit words and search seperately.

share|improve this answer
1  
This, although as the size of the list grows to the actual size he's using, lambda might lose (I don't use lambda's enough to know their growth :x) –  VoronoiPotato Aug 10 '12 at 14:24
    
Thank you for introducing timeit, very useful indeed –  hmghaly Aug 10 '12 at 14:26
1  
lambda is a camparison exapmle. what i try to say is , using timeit with real data is the best way to make the decision (: –  FallenAngel Aug 10 '12 at 14:26
    
Yes, definitely agreed, however he's also looking for different methods to test :). –  VoronoiPotato Aug 10 '12 at 14:32
1  
I updated the answer with a more real time dataset and new results, also i kept old data set and results for efficiency comparrison according to dataset size –  FallenAngel Aug 11 '12 at 12:48
show 4 more comments

You may find a Radix tree to be the most efficient.

The basic idea is to convert the text being searched into a tree that's efficient for finding other strings in. However, since the tokens you are searching for have whitespace in them, you'll have to do some fiddling to figure out the best definition of a token.

For example, every grouping of X words is one token, where X is the maximum number of words in a given item you are searching for. Example: The tree for "Everything is green over here." with a token length of 3 words would contain "Everything is green", "is green over", and "green over here".

Given the example in the question (posted after the above was written), I ended up reversing what I suggested above in the code below. The tokens being searched for are added to the Trie/Radix tree, then the text string is progressively searched for them. The striked-out lines above may be more efficient if you have less tokens and more text to search.

Here's a Python implementation of a radix tree, so you wouldn't necessarily have to write it yourself, and here's an implementation using that Radix tree:

from radix_tree import RadixTree
Tokens = list(set([.....the list in the question.....])) # 'El Salvador' is listed twice, this is to make it unique easily.

trie = RadixTree()
for token in Tokens:
   trie.insert(token, token)

def FindMatches(trie, text):
   while 0 < len(text):
      try:
         test = text[:text.index(" ")]
      except ValueError:
         test = text

      for token in trie.search_prefix(test, 100):
         if text.startswith(token):
            print token

      try:
         text = text[text.index(" ") + 1:]
      except ValueError:
         break # End of string

FindMatches(trie, "I went to New York and New Orleans and London and United States, Canada, and Egypt, Saudi Arabia")

Note: New Orleans is not in the list of tokens, and Canada and Egypt are not being found by the Trie inside search_prefix because "," is included in the token from the test string.

share|improve this answer
    
Thank you, this seems promising –  hmghaly Aug 10 '12 at 19:17
add comment

It might be worth trying the regex implementation on PyPI to see if that's faster:

http://pypi.python.org/pypi/regex

I'm thinking in particular of the "named lists" feature.

share|improve this answer
add comment

Regardless of the actual parsing method, since your data is so large, you're going to have them in files, which you probably already are doing in some way. Here's a way I think is most efficient in getting your data into python:

search.txt - your strings to search for, searchterms will be a list of strings

large.txt - the text to search through, large will be a single string

 with open('search.txt') as x: searchterms = x.readlines()
 with open('large.txt') as x: large = x.read()

I suggest you iterate over searchterms to find your matches in large as HussainNagri suggested in his answer:

for i in searchterms:
  if i in large:
    print i, " found in text"
share|improve this answer
    
Roughly 75 kb of text isn't exactly gut wrenching for a modern computer. –  VoronoiPotato Aug 10 '12 at 14:22
    
I agree... but that's not at all what I'm saying here. I encourage you to actually read a post before downvoting someone because they suggest using files to hold large amounts of data. –  kevlar1818 Aug 10 '12 at 14:32
    
It's tangential to the question. It doesn't actually help him solve the act of searching the information. –  VoronoiPotato Aug 10 '12 at 14:43
    
Ok sure, but since the OP didn't specify an input method, I figured I provide a good choice for getting that data into python efficiently (efficiency seems to be his main agenda). Also, I still answered the question at the end of my post. –  kevlar1818 Aug 10 '12 at 14:45
    
Once it's loaded into memory it takes just as fast whether it's stated in code or in a file, and that answer is functionally equivalent to the first answer posted. I'm not trying to be mean, I just don't think it's a very constructive answer. If you can edit it to be more helpful I'll remove my downvote. –  VoronoiPotato Aug 10 '12 at 14:48
show 2 more comments

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.