个性化召回算法实践(二)——LFM算法

LFM算法核心思想是通过隐含特征(latent factor)联系用户兴趣和物品,找出潜在的主题和分类。LFM(latent factor model)通过如下公式计算用户u对物品i的兴趣:

[Preference(u,i) = r_{ui} = {p_u}^T q_i = sum_{f=1}^F p_{u,k} q_{i,k} ]

定义(P)矩阵是user-class矩阵,矩阵值(P_{ij})表示的是user (i)对class (j)的兴趣度;(Q)矩阵式class-item矩阵,矩阵值(Q_{ij})表示的是item (j)在class (i)中的权重,权重越高越能作为该类的代表。那么,用户(U)对物品(I)的兴趣度为:

[R_{UI} = P_U Q_I = sum_{k=1}^K P_{U,K} Q_{K,I} ]

整个程序框架分为了train和test两个部分。
在训练中,初始化需要所有的user_id与item_id,然后指定初始化参数:主题数量(class_count),迭代次数(iter_count),学习率(lr),正则项参数(lambd)。
之后调用了两个方法:

  • _init_data
    这里假设用户观看的电影评分3分以上为正样本,所以需要对其他电影采样作为负样本。self.items_dict存储了对于每一个用户而言的正样本和负样本字典。若为正,则value为1,否则,value为0。

实际上,对于评分数据而言,可以直接采用rating作为label,这里区分正负样本是为了更具普遍性。

  • _init_model
    初始化向量(p)(q)后,使用LFM算法迭代计算。具体的:

[predict = sigmoid(sum P_{U,K} Q_{K,I}) ]

令损失函数为:

[J = 1/2 * (y - predict)^2 + lambda ||p_u||^2 + lambda ||q_i||^2 ]

根据梯度下降,可得:

[p_u = p_u - lr * [-(y - predict) * q_i + 2 lambda ||p_u||] \ q_i = q_i - lr * [-(y - predict) * p_u + 2 lambda ||q_i||] ]

全部代码如下所示:

#-*-coding:utf-8-*-
"""
author:jamest
date:20190306
LFM function
"""
import math
import pandas as pd
import random
import numpy as np
import pickle

class LFM:
    def __init__(self, user_ids, item_ids):
        self.class_count = 5
        self.iter_count = 5
        self.lr = 0.02
        self.lambd = 0.01
        self._init_data(user_ids, item_ids)
        self._init_model()

    # 下采样
    def _randomSelectNegativeSample(self,user_id,user_ids,item_ids):
        items = [x[1] for x in zip(user_ids,item_ids) if x[0]==user_id]
        res = dict()
        for i in items:
            res[i] = 1
        n = 0
        for i in range(len(items) * 3):
            item = item_ids[random.randint(0, len(item_ids) - 1)]
            if item in res:
                continue
            res[item] = 0
            n += 1
            if n > len(items):
                break
        return res


    def _get_dic(self,user_ids,item_ids):
        items_dict = {}
        for user_id in self.user_ids_set:
            items_dict[user_id] = self._randomSelectNegativeSample(user_id,user_ids,item_ids)
        return items_dict



    def _init_data(self,user_ids,item_ids):
        self.user_ids_set = set(user_ids)
        self.item_ids_set = set(item_ids)
        self.items_dict = self._get_dic(user_ids,item_ids)

    def _init_model(self):
        """
        Get corpus and initialize model params.
        """
        array_p = np.random.randn(len(self.user_ids_set), self.class_count)
        array_q = np.random.randn(len(self.item_ids_set), self.class_count)
        self.p = pd.DataFrame(array_p, columns=range(0, self.class_count), index=list(self.user_ids_set))
        self.q = pd.DataFrame(array_q, columns=range(0, self.class_count), index=list(self.item_ids_set))

    def _predict(self, user_id, item_id):
        """
        Calculate interest between user_id and item_id.
        p is the look-up-table for user's interest of each class.
        q means the probability of each item being classified as each class.
        """
        p = np.mat(self.p.ix[user_id].values)
        q = np.mat(self.q.ix[item_id].values).T
        r = (p * q).sum()
        # logit = 1.0 / (1 + math.exp(-r))
        logit = self._sigmoid(r)
        return logit


    def _sigmoid(self,z):
        return 1./(1 + np.exp(-z))

    def _loss(self, user_id, item_id, y, step):
        """
        Loss Function define as MSE, the code write here not that formula you think.
        """
        e = y - self._predict(user_id, item_id)
        print('Step: {}, user_id: {}, item_id: {}, y: {}, loss: {}'.
              format(step, user_id, item_id, y, e))
        return e

    def _optimize(self, user_id, item_id, e):
        """
        Use SGD as optimizer, with L2 p, q square regular.
        e.g: E = 1/2 * (y - predict)^2, predict = matrix_p * matrix_q
             derivation(E, p) = -matrix_q*(y - predict), derivation(E, q) = -matrix_p*(y - predict),
             derivation(l2_square,p) = lam * p, derivation(l2_square, q) = lam * q
             delta_p = lr * (derivation(E, p) + derivation(l2_square,p))
             delta_q = lr * (derivation(E, q) + derivation(l2_square, q))
        """
        gradient_p = -e * self.q.ix[item_id].values
        l2_p = 2 * self.lambd * self.p.ix[user_id].values
        delta_p = self.lr * (gradient_p + l2_p)

        gradient_q = -e * self.p.ix[user_id].values
        l2_q =  2 * self.lambd * self.q.ix[item_id].values
        delta_q = self.lr * (gradient_q + l2_q)

        self.p.loc[user_id] -= delta_p
        self.q.loc[item_id] -= delta_q

    def train(self):
        for step in range(self.iter_count):
            for user_id, item_dict in self.items_dict.items():
                item_ids = list(item_dict.keys())
                random.shuffle(item_ids)
                for item_id in item_ids:
                    e = self._loss(user_id, item_id, item_dict[item_id], step)
                    self._optimize(user_id, item_id, e)
            self.lr *= 0.9
        self.save()

    def predict(self, user_id, items,top_n=10):
        """
        Calculate all item user have not meet before and return the top n interest items.
        """
        self.load()
        user_item_ids = set(items)
        other_item_ids = self.item_ids_set ^ user_item_ids
        interest_list = [self._predict(user_id, item_id) for item_id in other_item_ids]
        candidates = sorted(zip(list(other_item_ids), interest_list), key=lambda x: x[1], reverse=True)
        return candidates[:top_n]

    def save(self):
        """
        Save model params.
        """
        f = open('../data/lfm.model', 'wb')
        pickle.dump((self.p, self.q), f)
        f.close()

    def load(self):
        """
        Load model params.
        """
        f = open('../data/lfm.model', 'rb')
        self.p, self.q = pickle.load(f)
        f.close()



if __name__ == '__main__':
    moviesPath = '../data/ml-1m/movies.dat'
    ratingsPath = '../data/ml-1m/ratings.dat'
    usersPath = '../data/ml-1m/users.dat'

    ratingsDF = pd.read_csv(ratingsPath, index_col=None, sep='::', header=None,names=['user_id', 'movie_id', 'rating', 'timestamp'])

    ratingsDF = ratingsDF[ratingsDF['rating']>3]
    X=ratingsDF['user_id'][:1000]
    Y=ratingsDF['movie_id'][:1000]

    # LFM(X,Y).train()
    items = ratingsDF[ratingsDF['user_id']==1]['movie_id'].values
    rank = LFM(X,Y).predict(1,items)
    print('LFM result',rank)

参考:
推荐系统概述(一)
Github

原文地址:https://www.cnblogs.com/hellojamest/p/11760214.html