# A dictionary of movie critics and their ratings of a small # set of movies critics={'Lisa Rose': {'Lady in the Water': 2.5, 'Snakes on a Plane': 3.5, 'Just My Luck': 3.0, 'Superman Returns': 3.5, 'You, Me and Dupree': 2.5, 'The Night Listener': 3.0}, 'Gene Seymour': {'Lady in the Water': 3.0, 'Snakes on a Plane': 3.5, 'Just My Luck': 1.5, 'Superman Returns': 5.0, 'The Night Listener': 3.0, 'You, Me and Dupree': 3.5}, 'Michael Phillips': {'Lady in the Water': 2.5, 'Snakes on a Plane': 3.0, 'Superman Returns': 3.5, 'The Night Listener': 4.0}, 'Claudia Puig': {'Snakes on a Plane': 3.5, 'Just My Luck': 3.0, 'The Night Listener': 4.5, 'Superman Returns': 4.0, 'You, Me and Dupree': 2.5}, 'Mick LaSalle': {'Lady in the Water': 3.0, 'Snakes on a Plane': 4.0, 'Just My Luck': 2.0, 'Superman Returns': 3.0, 'The Night Listener': 3.0, 'You, Me and Dupree': 2.0}, 'Jack Matthews': {'Lady in the Water': 3.0, 'Snakes on a Plane': 4.0, 'The Night Listener': 3.0, 'Superman Returns': 5.0, 'You, Me and Dupree': 3.5}, 'Toby': {'Snakes on a Plane':4.5,'You, Me and Dupree':1.0,'Superman Returns':4.0}} from math import sqrt # Returns a distance-based similarity score for person1 and person2 def sim_distance(prefs,person1,person2): # Get the list of shared_items si={} for item in prefs[person1]: if item in prefs[person2]: si[item]=1 # if they have no ratings in common, return 0 if len(si)==0: return 0 # Add up the squares of all the differences sum_of_squares=sum([pow(prefs[person1][item]-prefs[person2][item],2) for item in prefs[person1] if item in prefs[person2]]) return 1/(1+sum_of_squares) # Returns the Pearson correlation coefficient for p1 and p2 def sim_pearson(prefs,p1,p2): # Get the list of mutually rated items si={} for item in prefs[p1]: if item in prefs[p2]: si[item]=1 # if they are no ratings in common, return 0 if len(si)==0: return 0 # Sum calculations n=len(si) # Sums of all the preferences sum1=sum([prefs[p1][it] for it in si]) sum2=sum([prefs[p2][it] for it in si]) # Sums of the squares sum1Sq=sum([pow(prefs[p1][it],2) for it in si]) sum2Sq=sum([pow(prefs[p2][it],2) for it in si]) # Sum of the products pSum=sum([prefs[p1][it]*prefs[p2][it] for it in si]) # Calculate r (Pearson score) num=pSum-(sum1*sum2/n) den=sqrt((sum1Sq-pow(sum1,2)/n)*(sum2Sq-pow(sum2,2)/n)) if den==0: return 0 r=num/den return r # Returns the best matches for person from the prefs dictionary. # Number of results and similarity function are optional params. def topMatches(prefs,person,n=5,similarity=sim_pearson): scores=[(similarity(prefs,person,other),other) for other in prefs if other!=person] scores.sort() scores.reverse() return scores[0:n] # Gets recommendations for a person by using a weighted average # of every other user's rankings def getRecommendations(prefs,person,similarity=sim_pearson): totals={} simSums={} for other in prefs: # don't compare me to myself if other==person: continue sim=similarity(prefs,person,other) # ignore scores of zero or lower if sim<=0: continue for item in prefs[other]: # only score movies I haven't seen yet if item not in prefs[person] or prefs[person][item]==0: # Similarity * Score totals.setdefault(item,0) totals[item]+=prefs[other][item]*sim # Sum of similarities simSums.setdefault(item,0) simSums[item]+=sim # Create the normalized list rankings=[(total/simSums[item],item) for item,total in totals.items()] # Return the sorted list rankings.sort() rankings.reverse() return rankings def transformPrefs(prefs): result={} for person in prefs: for item in prefs[person]: result.setdefault(item,{}) # Flip item and person result[item][person]=prefs[person][item] return result def calculateSimilarItems(prefs,n=10): # Create a dictionary of items showing which other items they # are most similar to. result={} # Invert the preference matrix to be item-centric itemPrefs=transformPrefs(prefs) c=0 for item in itemPrefs: # Status updates for large datasets c+=1 if c%100==0: print "%d / %d" % (c,len(itemPrefs)) # for python3.4 윗줄을 아랫줄로 대체 # if c%100==0: print ("%d / %d" % (c,len(itemPrefs))) # Find the most similar items to this one scores=topMatches(itemPrefs,item,n=n,similarity=sim_distance) result[item]=scores return result def getRecommendedItems(prefs,itemMatch,user): userRatings=prefs[user] scores={} totalSim={} # Loop over items rated by this user for (item,rating) in userRatings.items( ): # Loop over items similar to this one for (similarity,item2) in itemMatch[item]: # Ignore if this user has already rated this item if item2 in userRatings: continue # Weighted sum of rating times similarity scores.setdefault(item2,0) scores[item2]+=similarity*rating # Sum of all the similarities totalSim.setdefault(item2,0) totalSim[item2]+=similarity # Divide each total score by total weighting to get an average rankings=[(score/totalSim[item],item) for item,score in scores.items( )] # Return the rankings from highest to lowest rankings.sort( ) rankings.reverse( ) return rankings def loadMovieLens(path='/data/movielens'): # Get movie titles movies={} for line in open(path+'/u.item'): (id,title)=line.split('|')[0:2] movies[id]=title # Load data prefs={} for line in open(path+'/u.data'): (user,movieid,rating,ts)=line.split('\t') prefs.setdefault(user,{}) prefs[user][movies[movieid]]=float(rating) return prefs