A collaborative filtering method based on associative memory model

N. Agarwal
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引用次数: 1

Abstract

Recommender systems are intelligent systems that help consumers by recommending products they are likely to appreciate or purchase. These recommendations are based on the user's own purchasing, searching or browsing history and also that of other consumers with similar interests. These systems are often embedded in e-commerce applications with the aim to provide efficient personalized recommendations that are of mutual value to both the buyer and the seller. This paper presents a novel neural network based approach that employs associative memory model to make recommendations for purchase to consumers. Associative memory models are inherently able to solve pattern completion problem. This intrinsic property is of immense value in building efficient recommender systems for e-commerce applications that present consumers with recommendations they are likely to have a higher acceptance. The results of experiments based on this model compare favorably with those from the standard user-based algorithm.
一种基于联想记忆模型的协同过滤方法
推荐系统是一种智能系统,它通过向消费者推荐他们可能会欣赏或购买的产品来帮助消费者。这些推荐是基于用户自己的购买、搜索或浏览历史,以及其他有相似兴趣的消费者的历史。这些系统通常嵌入到电子商务应用程序中,目的是提供对买卖双方都有价值的高效个性化推荐。本文提出了一种新的基于神经网络的方法,利用联想记忆模型向消费者进行购买推荐。联想记忆模型天生就能解决模式补全问题。这种内在属性在为电子商务应用程序构建高效的推荐系统时具有巨大的价值,为消费者提供他们可能更容易接受的推荐。基于该模型的实验结果与基于用户的标准算法的结果进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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