A recommendation system for software function discovery

Naoki Ohsugi, Akito Monden, Ken-ichi Matsumoto
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引用次数: 28

Abstract

Since some application software provides users with too many functions, it is often difficult to find those that are useful. This paper proposes a recommendation system based on a collaborative filtering approach to let users discover useful functions at low cost for the purpose of improving productivity when using application software. The proposed system automatically collects histories of software function execution (usage histories) from many users through the Internet. Based on the collaborative filtering approach, collected histories are used for recommending a set of candidate functions that may be useful to the individual user. This paper illustrates conventional filtering algorithms and proposes a new algorithm suitable for recommendation of software functions. The result of an experiment with a prototype recommendation system showed that the average ndpm of our algorithm was smaller than that of conventional algorithms, and it also showed that the standard deviation of ndpm of our algorithm was smaller than that of conventional algorithms. Furthermore, while every conventional algorithm had a case whose recommendation was worse than the random algorithm, our algorithm did not.
面向软件功能发现的推荐系统
由于一些应用软件为用户提供了太多的功能,往往很难找到那些有用的。本文提出了一种基于协同过滤方法的推荐系统,使用户在使用应用软件时以较低的成本发现有用的功能,从而提高工作效率。该系统通过Internet自动收集许多用户的软件功能执行历史(使用历史)。基于协作过滤方法,收集的历史记录用于推荐一组可能对单个用户有用的候选功能。本文对传统的过滤算法进行了阐述,提出了一种适合于软件功能推荐的新算法。在一个原型推荐系统上的实验结果表明,我们的算法的平均ndpm小于常规算法,并且我们的算法的ndpm的标准差也小于常规算法。此外,虽然每个传统算法都有推荐比随机算法差的情况,但我们的算法没有。
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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