Automatic Recognition of Identification Schemes for IoT Identifiers via Sequence-to-Sequence Model

Xiaotao Li, Shujuan You, Wai Chen
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Abstract

In Internet of Things (IoT), each object requires a unique identifier to identify itself and index its detailed profile to support mutual recognitions among multiple objects. However, existing IoT identifiers belonging to different identification schemes are heterogeneous from each other, which create a great challenge for the applications that need to resolve the heterogeneous identifiers. To address this challenge, we propose an algorithm to automatically recognize the heterogeneous identification schemes used by various IoT identifiers, based on a sequence-to-sequence (seq2seq) model consisting of an encoder and a decoder. The encoder uses one Long Short-Term Memory (LSTM) to map the identifier sequence to a vector of fixed dimensionality, and the decoder uses another LSTM to unfold the vector into a target sequence representing the identification scheme of this identifier. To evaluate our algorithm, we create a new dataset named ID-20 with 20 categories of IoT identifiers and conduct experiments on it. The results demonstrate the superiority of our algorithm against other state-of-the-art methods, with an identifier recognition accuracy of up to 94.57%.
基于序列到序列模型的物联网标识符识别方案自动识别
在物联网(IoT)中,每个对象都需要一个唯一的标识符来标识自己,并索引其详细配置文件,以支持多个对象之间的相互识别。然而,现有属于不同标识方案的物联网标识相互之间存在异构性,这给需要解析异构标识的应用带来了很大的挑战。为了解决这一挑战,我们提出了一种算法,基于由编码器和解码器组成的序列到序列(seq2seq)模型,自动识别各种物联网标识符使用的异构识别方案。编码器使用一个LSTM (Long - Short-Term Memory)将标识符序列映射到固定维数的向量上,解码器使用另一个LSTM将该向量展开成表示该标识符识别方案的目标序列。为了评估我们的算法,我们创建了一个名为ID-20的新数据集,其中包含20类物联网标识符,并对其进行了实验。结果表明,该算法与其他先进方法相比具有优势,识别率高达94.57%。
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