研究業績リスト
ジャーナル論文 - rm_published_papers: Scientific Journal
公開済 25/12/2025
The International Journal of Advanced Manufacturing Technology
ジャーナル論文 - rm_published_papers: Scientific Journal
Unveiling Key Movements in Disassembly Task through Motion Capture Analysis and Machine Learning
公開済 12/2025
Asian Journal of Management Science and Applications
ジャーナル論文 - rm_misc: Others
Generation and annotation of item usage scenarios in e-commerce using large language models
公開済 09/10/2025
Complementary recommendations suggest combinations of useful items that play
important roles in e-commerce. However, complementary relationships are often
subjective and vary among individuals, making them difficult to infer from
historical data. Unlike conventional history-based methods that rely on
statistical co-occurrence, we focus on the underlying usage context that
motivates item combinations. We hypothesized that people select complementary
items by imagining specific usage scenarios and identifying the needs in such
situations. Based on this idea, we explored the use of large language models
(LLMs) to generate item usage scenarios as a starting point for constructing
complementary recommendation systems. First, we evaluated the plausibility of
LLM-generated scenarios through manual annotation. The results demonstrated
that approximately 85% of the generated scenarios were determined to be
plausible, suggesting that LLMs can effectively generate realistic item usage
scenarios.
ジャーナル論文 - rm_published_papers: International Conference Proceedings
Heterogeneous Feature Integration for Behavioral Profiles
公開済 21/09/2025
Proceedings of the Recommender Systems 2025, 36 - 40
ジャーナル論文 - rm_misc: Others
公開済 25/08/2025
Serendipity in recommender systems (RSs) has attracted increasing attention
as a concept that enhances user satisfaction by presenting unexpected and
useful items. However, evaluating serendipitous performance remains challenging
because its ground truth is generally unobservable. The existing offline
metrics often depend on ambiguous definitions or are tailored to specific
datasets and RSs, thereby limiting their generalizability. To address this
issue, we propose a universally applicable evaluation framework that leverages
large language models (LLMs) known for their extensive knowledge and reasoning
capabilities, as evaluators. First, to improve the evaluation performance of
the proposed framework, we assessed the serendipity prediction accuracy of LLMs
using four different prompt strategies on a dataset containing user-annotated
serendipitous ground truth and found that the chain-of-thought prompt achieved
the highest accuracy. Next, we re-evaluated the serendipitous performance of
both serendipity-oriented and general RSs using the proposed framework on three
commonly used real-world datasets, without the ground truth. The results
indicated that there was no serendipity-oriented RS that consistently
outperformed across all datasets, and even a general RS sometimes achieved
higher performance than the serendipity-oriented RS.
ジャーナル論文 - rm_misc: Others
Similarity-Based Supervised User Session Segmentation Method for Behavior Logs
公開済 22/08/2025
In information recommendation, a session refers to a sequence of user actions
within a specific time frame. Session-based recommender systems aim to capture
short-term preferences and generate relevant recommendations. However, user
interests may shift even within a session, making appropriate segmentation
essential for modeling dynamic behaviors. In this study, we propose a
supervised session segmentation method based on similarity features derived
from action embeddings and attributes. We compute the similarity scores between
items within a fixed-size window around each candidate segmentation point,
using four types of features: item co-occurrence embeddings, text embeddings of
titles and brands, and price. These features are used to train supervised
classifiers (LightGBM, XGBoost, CatBoost, support vector machine, and logistic
regression) to predict the session boundaries. We construct a manually
annotated dataset from real user browsing histories and evaluate the
segmentation performance using F1-score, area under the precision-recall curve
(PR-AUC), and area under the receiver operating characteristic curve. The
LightGBM model achieves the best performance, with an F1-score of 0.806 and a
PR-AUC of 0.831. These results demonstrate the effectiveness of the proposed
method for session segmentation and its potential to capture dynamic user
behaviors.
ジャーナル論文 - rm_published_papers: Scientific Journal
公開済 25/02/2025
情報処理学会論文誌数理モデル化と応用(TOM), 18, 1, 1 - 9
推薦システムは,利用者にとって価値があるアイテムを特定することで,利用者のアイテム探しを補助するシステムである.大学図書館においても,貸出履歴や図書の内容情報を使って利用者に図書を推薦する手法が提案されている.しかし,異なる学習状況や目的を持って図書を探しに訪れる利用者を考慮した図書推薦手法は実現されていない.本研究では,授業と関連した図書に,授業科目や用途,難易度,その他図書の特徴を表すラベルを手作業で付加した蔵書DBを構築し,利用者の希望を選択式で受付けることで,利用者の目的と状況に合った図書を推薦することを可能にした.この手法を実装し,既存システムOPACを比較対象とした被験者実験を行った.その結果,「借りてみたい図書を見つけることができる」,「要望が推薦結果によく反映されている」といった観点において,提案手法がOPACを有意に上回ることが示された.
Recommendation system is designed to assist users in finding their desired items by identifying users' preference. In university libraries, recommendation methods have been proposed that use borrowing histories and book content information to recommend books to users. However, existing approaches do not adequately consider users' diverse and dynamic learning situations and objectives when recommending books. The purpose of this study is to propose a recommendation method for recommending class-related books in university libraries. In this study, we created a library database that each book is manually labeled with information on relevant course subjects, intended usage, difficulty level, and other characteristics. Allowing users to select their preferences through a simple choice-based interface, we elicit users' preference and recommend books with considering their purpose and current learning needs. We implemented this method and conducted a comparative experiment with OPAC. The results showed that our proposed system significantly outperformed OPAC in terms of the following aspects: whether you could find desired books and you felt that the recommendations reflected your preferences.
ジャーナル論文 - rm_misc: Others
A Completely Locale-independent Session-based Recommender System by Leveraging Trained Model
公開済 11/10/2023
CoRR, abs/2310.07281
In this paper, we propose a solution that won the 10th prize in the KDD Cup
2023 Challenge Task 2 (Next Product Recommendation for Underrepresented
Languages/Locales). Our approach involves two steps: (i) Identify candidate
item sets based on co-visitation, and (ii) Re-ranking the items using LightGBM
with locale-independent features, including session-based features and product
similarity. The experiment demonstrated that the locale-independent model
performed consistently well across different test locales, and performed even
better when incorporating data from other locales into the training.
ジャーナル論文 - rm_misc: Others
AIWolfDial 2023: Summary of Natural Language Division of 5th International AIWolf Contest.
公開済 2023
INLG (Generation Challenges), 84 - 100
ジャーナル論文 - rm_published_papers: International Conference Proceedings
Relationships between usual and exotic Hida–Kubo–Takenaka spaces
公開済 08/06/2011
Stochastics, 84, 2-3, 307 - 313