Jianzhi Shen (jiseshen)

jiseshen

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Company:Fudan University

Location:Shanghai

Twitter:@jiseshen

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Jianzhi Shen's repositories

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novel-object-captioning-experiment

Reproduction of Deep Compositional Captioning: Describing Novel Object Categories without Paired Training Data and Captioning Images with Diverse Objects, with some minor changes in the equivocal points.

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functa-experiment

Reproduction of *From data to functa: Your data point is a function and you can treat it like one* and *Spatial Functa: Scaling Functa to ImageNet Classification and Generation*.

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CNN-experiments-on-CIFAR10

Some experiments to maximize the accuracy of image classification or the efficiency of training on CIFAR. Including ResNet, One Cycle Learning Rate, Cutout, etc.

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aspect-based-sentimental-classification-experiment

Reproduction of *A Joint Training Dual-MRC Framework for Aspect Based Sentiment Analysis* and *Relational Graph Attention Network for Aspect-based Sentiment Analysis*, with the baseline as vanilla BERT classifier.

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express-logistics-system

Based on Django and MySQL, a deployable website featuring delivery management, temporary storage and user interface.

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time-series-experiment

The data used is the geomagnetic data with hourly temporal solution. It is collected from Archived data of WDC for geomag., Kyoto., and the observation was done by Guam Observatory.

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causal-inference-experiment

Carried on NSW dataset, using methods like regression, matching, weighting and DID.

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user-profile-experiment

Using Weibo dataset and based on the data of history blogs, this project implements feature extraction to predict the user's gender, age and area. The features concerned include graph embedding, text embedding and Emoji embedding.

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