Skip to content

This AI Paper Introduces AssistantBench and SeePlanAct: A Benchmark and Agent for Complex Web-Based Tasks Nikhil Artificial Intelligence Category – MarkTechPost

  • by

​[[{“value”:”

Artificial intelligence (AI) is dedicated to developing systems capable of performing tasks that typically require human intelligence. This dedication is met with numerous challenges along the way. One such challenge in AI is creating systems that can manage complex, realistic tasks requiring extensive interaction with dynamic environments. These tasks often involve searching for and synthesizing information from the web, a process that current models need help to accomplish with high accuracy and reliability. This gap in capabilities highlights the need for more advanced AI systems.

Existing methods for addressing web-based tasks include closed-book language models (LMs) and retrieval-augmented LMs. Closed-book models rely solely on pre-existing knowledge encoded within their parameters, often resulting in hallucinations where the model generates incorrect information. Retrieval-augmented models attempt to gather and utilize relevant data from the web. However, the quality and relevance of the retrieved information can vary significantly, limiting the overall effectiveness of these models.

Researchers from Tel Aviv University, the University of Pennsylvania, the Allen Institute for AI, the University of Washington, and Princeton University have introduced a new benchmark called ASSISTANTBENCH to address these challenges, aimed at evaluating the capabilities of web agents in performing realistic, time-consuming web tasks. This benchmark consists of 214 diverse tasks that span various domains and require web-based interaction. Furthermore, researchers proposed SEEPLANACT (SPA), a novel web agent designed to enhance task performance by incorporating a planning component and a memory buffer.

SPA builds upon the existing SEEACT model, introducing several improvements to enhance web navigation and task execution. The planning component enables SPA to strategize its approach to each task, allowing it to re-plan and adjust its strategy dynamically based on interactions with web elements. The memory buffer retains information gathered during the task, enabling SPA to utilize this information effectively throughout the task’s duration. These enhancements allow SPA to interact more robustly with web elements, navigate dynamically, and adjust its plan as needed, providing a more effective solution for handling complex web tasks.

Performance evaluations of SPA on the ASSISTANTBENCH benchmark showed significant improvements over previous models. SPA achieved an accuracy score of 11 points, a substantial increase compared to the 4.2 points achieved by the earlier SEEACT model. Moreover, SPA demonstrated higher precision, with a 10-point increase in the number of correctly answered questions. This improvement was primarily due to SPA’s enhanced ability to navigate web environments and utilize gathered information effectively. Despite these advancements, the overall accuracy of the best-performing models did not exceed 25%, highlighting the continued challenges in developing highly reliable web-based AI solutions.

In more detailed performance metrics, SPA’s integration of planning and memory components allowed it to outperform other models in terms of answer rate and precision. SPA’s answer rate was 38.8%, compared to the 20% achieved by the earlier SEEACT model. The precision of SPA was also higher, at 29.0%, compared to the 19.6% of SEEACT. Combining SPA with a closed-book model, the ensemble model achieved the best overall performance, with an accuracy of 25.2 points, further emphasizing SPA’s effectiveness in improving task performance.

To conclude, this research underscores the critical challenges in developing AI systems capable of performing realistic, time-consuming web tasks. The introduction of ASSISTANTBENCH and SPA represents a significant step forward in addressing these challenges. However, a considerable gap remains in achieving reliable, high-precision AI solutions for web navigation, emphasizing the need for continued innovation and improvement in this field. The advancements made by the research teams from Tel Aviv University, the University of Pennsylvania, the Allen Institute for AI, the University of Washington, and Princeton University are promising but highlight the necessity for ongoing research and development to bridge the gap in web-based AI capabilities.

Check out the Paper and Project. All credit for this research goes to the researchers of this project. Also, don’t forget to follow us on Twitter and join our Telegram Channel and LinkedIn Group. If you like our work, you will love our newsletter..

Don’t Forget to join our 47k+ ML SubReddit

Find Upcoming AI Webinars here

The post This AI Paper Introduces AssistantBench and SeePlanAct: A Benchmark and Agent for Complex Web-Based Tasks appeared first on MarkTechPost.

“}]] [[{“value”:”Artificial intelligence (AI) is dedicated to developing systems capable of performing tasks that typically require human intelligence. This dedication is met with numerous challenges along the way. One such challenge in AI is creating systems that can manage complex, realistic tasks requiring extensive interaction with dynamic environments. These tasks often involve searching for and synthesizing
The post This AI Paper Introduces AssistantBench and SeePlanAct: A Benchmark and Agent for Complex Web-Based Tasks appeared first on MarkTechPost.”}]]  Read More AI Paper Summary, AI Shorts, Applications, Artificial Intelligence, Editors Pick, Language Model, Large Language Model, Staff, Tech News, Technology 

Leave a Reply

Your email address will not be published. Required fields are marked *