local doclassify = {} local st = require("stmr") doclassify.bow = function(data, stopwords) -- first step get a table of worlds that contain -- world: occurences local bag = {} for w in data:gmatch('%w+') do local word = w:lower() if not stopwords[word] then word = st.stmr(word) if bag[word] then bag[word].count = bag[word].count + 1 else bag[word] = {count=0, tf=0, tfidf=0.0} bag[word].count = 1 end end end -- now calculate the tf of the bag for k,v in pairs(bag) do bag[k].tf = math.log(1 + bag[k].count) end return bag end doclassify.len = function(table) local cnt = 0 for k,v in pairs(table) do cnt = cnt+1 end return cnt end doclassify.tfidf = function(documents) -- now for each term in a bag, calculate -- the inverse document frequency, which -- is a measure of how much information -- the word provides, that is, whether the -- term is common or rare across all documents local ndoc = doclassify.len(documents) for k,bag in pairs(documents) do -- for eacht term in bag -- calculate its idf across all documents for term,b in pairs(bag) do local n = 0 for id,doc in pairs(documents) do if doc[term] then n = n+1 end end --echo("term:"..term.." appears in"..n.." documents") b.tfidf = b.tf*math.log(ndoc/n) end end end doclassify.search = function(term, documents) local r = {} for id, doc in pairs(documents) do if doc[term:lower()] then r[id] = doc[term].tfidf end end return r end doclassify.get_vectors = function(documents) -- get a list of vector from documents local index = 0 local vectors = {} local maps = {} local terms = {} local maxv = 0 for id in pairs(documents) do maps[id] = {} vectors[id] = {} end -- first loop, get the term for id, doc in pairs(documents) do for k,v in pairs(doc) do -- get max value if v.tfidf > maxv then maxv = v.tfidf end -- get the term if not terms[k] then index = index + 1 terms[k] = index end for pid in pairs(documents) do if not maps[pid][k] then if id == pid then maps[pid][k] = v.tfidf else maps[pid][k] = 0 end else if maps[pid][k] == 0 and id == pid then maps[pid][k] = v.tfidf end end end end end -- reindexing the vectors for id in pairs(documents) do for k,v in pairs(maps[id]) do vectors[id][terms[k]] = v end end --echo("Max tfidf "..maxv.." in document #"..maxid.." of term "..term) return vectors, maxv, index, terms end doclassify.similarity = function(va, vb) -- using cosin similarity local dotp = 0 local maga = 0 local magb = 0 for k = 1,#va do dotp = dotp + va[k]*vb[k] maga = maga + va[k]*va[k] magb = magb + vb[k]*vb[k] end maga = math.sqrt(maga) magb = math.sqrt(magb) local d = 0 if maga ~= 0 and magb ~= 0 then d = dotp/ (magb*maga) end return d end doclassify.similarities = function(v1, collection) local similarities = {} assert(#v1 == #(collection[1]), "Incorrect vectors size") for i=1,#collection do similarities[i] = doclassify.similarity(v1, collection[i]) end return similarities end doclassify.mean_similarity = function(v1, v2) assert(#v1 == #v2, "Incorrect vectors size") local similarities = {} for i = 1,#v1 do similarities[i] = doclassify.similarity(v1[i], v2[i]) end return doclassify.mean(similarities) end doclassify.similarity_chart = function(id, vectors) local vs = {} local cnt = 0 local lut = {} for k,v in pairs(vectors) do if k ~= id then cnt = cnt + 1 vs[cnt] = v lut[cnt] = k end end if not vs[1] then return {} end return doclassify.similarities(vectors[id], vs), lut end doclassify.top_similarity = function(id, vectors, n, th) local chart,lut = doclassify.similarity_chart(id,vectors) --echo(JSON.encode(chart)) --echo(JSON.encode(lut)) if not lut or #lut <= 0 then return nil end local top = {} local j=0 local goon = true if not th then goon = false th = 0 end while j < n or goon do local i,maxv = doclassify.argmax(chart) top[lut[i]] = maxv chart[i] = 0.0 j=j+1 if maxv < th and goon then goon = false end end --for j=1,n do -- local i,maxv = doclassify.argmax(chart) -- top[lut[i]] = maxv -- chart[i] = 0.0 --end return top end doclassify.save_vectors = function(vectors, name) local f = io.open(name,"w") if f == nil then return false end for id, v in pairs(vectors) do f:write(id) for i=1,#v do f:write(","..v[i]) end f:write("\n") end f:close() return true end doclassify.save_topchart = function(vectors, name,n) local f = io.open(name,"w") if f == nil then return false end for k,v in pairs(vectors) do local top = doclassify.top_similarity(k,vectors,n, 0.1) for a,b in pairs(top) do f:write(k.." "..a.." "..b.."\n") end end f:close() return true end doclassify.kmean = function(nclass, documents, maxstep, ids) -- now local vectors, maxv, size = doclassify.get_vectors(documents) -- random centroids local centroids = {} local old_centroids = {} local clusters = {} --for pid in pairs(documents) do clusters[pid] = 0 end -- add noise to mean_vector for i = 1,nclass do if ids == nil then centroids[i] = doclassify.random(size,math.floor(maxv)) else centroids[i] = vectors[ids[i]] end old_centroids[i] = doclassify.zeros(size) end -- loop until convergence or maxstep reached local similarity = doclassify.mean_similarity(centroids, old_centroids) local step = maxstep while 1.0-similarity > 1e-9 and step > 0 do clusters = {} --echo(JSON.encode(centroids)) for id,v in pairs(vectors) do local similarities = doclassify.similarities(v, centroids) --echo(JSON.encode(similarities)) local cluster, maxvalue = doclassify.argmax(similarities) --echo("doc #"..id.." is in clusters #"..cluster.." max value is "..maxvalue) clusters[id] = cluster end -- storing the old centroids old_centroids = centroids -- calculate new centroids local new_centroids = {} for class in pairs(centroids) do local cnt = 0 local cvectors = {} for id,v in pairs(vectors) do if clusters[id] == class then cnt = cnt + 1 cvectors[cnt] = v end end new_centroids[class] = doclassify.mean_vector(cvectors, size) end centroids = new_centroids --echo(JSON.encode(centroids)) --echo(JSON.encode(old_centroids)) similarity = doclassify.mean_similarity(centroids, old_centroids) echo("step #"..step..", similarity "..similarity) step = step - 1 end local results = {} for i = 1,nclass do local list = {} local cnt = 0 for id,c in pairs(clusters) do if c == i then cnt = cnt + 1 list[cnt] = id end end results[i] = list end return results, clusters, centroids end doclassify.zeros = function(n) local vector = {} for i = 1,n do vector[i] = 0.0 end return vector end doclassify.random = function(n,maxv) local vector = {} for i=1,n do vector[i] = math.random() + math.random(0, maxv) end return vector end doclassify.sum = function(v) local sum = 0.0 for i=1,#v do sum = sum + v[i] end return sum end doclassify.mean = function(v) return doclassify.sum(v)/#v end doclassify.mean_vector = function(vectors, size) local means = doclassify.zeros(size) if not vectors or #vectors == 0 then return means end --local size = #(vectors[1]) local times = 0 for k,v in pairs(vectors) do for i=1,#v do means[i] = means[i] + v[i] end times = times + 1 end for i = 1,size do means[i] = means[i]/times end return means end doclassify.argmin = function(v) local minv = 0.0 local mini = 0.0 for i = 1,#v do if v[i] <= minv then mini = i minv = v[i] end end --echo("min index"..mini.." val "..minv) return mini, minv end doclassify.argmax = function(v) local maxv = 0.0 local maxi = 0.0 for i = 1,#v do if v[i] >= maxv then maxi = i maxv = v[i] end end return maxi,maxv end return doclassify