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Visually-Aware Fashion Recommendation and Design with Generative Image Models (1711.02231v1)

Published 7 Nov 2017 in cs.CV, cs.AI, cs.HC, cs.IR, and cs.MM

Abstract: Building effective recommender systems for domains like fashion is challenging due to the high level of subjectivity and the semantic complexity of the features involved (i.e., fashion styles). Recent work has shown that approaches to visual' recommendation (e.g.~clothing, art, etc.) can be made more accurate by incorporating visual signals directly into the recommendation objective, usingoff-the-shelf' feature representations derived from deep networks. Here, we seek to extend this contribution by showing that recommendation performance can be significantly improved by learning `fashion aware' image representations directly, i.e., by training the image representation (from the pixel level) and the recommender system jointly; this contribution is related to recent work using Siamese CNNs, though we are able to show improvements over state-of-the-art recommendation techniques such as BPR and variants that make use of pre-trained visual features. Furthermore, we show that our model can be used \emph{generatively}, i.e., given a user and a product category, we can generate new images (i.e., clothing items) that are most consistent with their personal taste. This represents a first step towards building systems that go beyond recommending existing items from a product corpus, but which can be used to suggest styles and aid the design of new products.

Overview of "Bare Advanced Demo of IEEEtran.cls for IEEE Computer Society Journals"

The paper, authored by Michael Shell, John Doe, and Jane Doe, provides a template and comprehensive guide for preparing journal papers for the IEEE Computer Society using the IEEEtran.cls class file in LaTeX. Published with the explicit aim of assisting authors in typesetting their manuscripts, this document serves as a practical and essential tool for researchers engaging in IEEE submissions.

Document Structure and Content

The paper details the structural components necessary for producing a complete submission, including sections such as the title, author information, abstract, and keyword indexing. Notably, it also covers items specific to IEEE transactions, such as the use of \IEEEcompsocthanksitem for acknowledging affiliations.

Embedded within the text is a step-by-step illustration for implementing the \IEEEtitleabstractindextext command, which helps manage the abstract and keywords effectively. This command is particularly useful for aligning with the formatting requirements of IEEE publications.

Notable Features

  1. Version Compliance: The paper emphasizes compatibility with IEEEtran.cls version 1.8b and later, indicating that it incorporates updated methods relevant to recent LaTeX distributions. This ensures authors leverage the latest functionalities available for IEEE formatting.
  2. Detailed Sections: The document is methodically divided into sections and appendices, demonstrating usage from introductory elements to conclusion remarks. The presence of appendices guides users in managing additional materials and proofs, which are crucial for technical publications.
  3. Practical Illustrations: The authors provide boilerplate text for sections such as introduction, acknowledgments, and bibliography. These serve as practical examples, allowing authors to model their manuscripts efficiently.

Implications and Future Developments

The value offered by this guide lies in its potential to streamline and standardize the submission process for researchers aiming to publish within IEEE. By demystifying the complexities of document preparation, the paper may support increased accuracy and professionalism across submissions.

Additionally, as LaTeX evolves and IEEE introduces new formatting policies, it remains essential to periodically update such guides. Future developments could integrate advanced typesetting features such as enhanced font handling, better support for multimedia elements, and more robust cross-referencing capabilities.

In conclusion, "Bare Advanced Demo of IEEEtran.cls for IEEE Computer Society Journals" stands as a crucial resource for the community of IEEE authors, offering clarity and utility. In an academic environment where time and accuracy are paramount, such resources play a vital role in supporting the publication pipeline of high-quality research.

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Authors (4)
  1. Wang-Cheng Kang (16 papers)
  2. Chen Fang (157 papers)
  3. Zhaowen Wang (55 papers)
  4. Julian McAuley (238 papers)
Citations (241)
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