Analysis of Watson's Strategies for Playing Jeopardy!

02/04/2014
by   Gerald Tesauro, et al.
0

Major advances in Question Answering technology were needed for IBM Watson to play Jeopardy! at championship level -- the show requires rapid-fire answers to challenging natural language questions, broad general knowledge, high precision, and accurate confidence estimates. In addition, Jeopardy! features four types of decision making carrying great strategic importance: (1) Daily Double wagering; (2) Final Jeopardy wagering; (3) selecting the next square when in control of the board; (4) deciding whether to attempt to answer, i.e., "buzz in." Using sophisticated strategies for these decisions, that properly account for the game state and future event probabilities, can significantly boost a players overall chances to win, when compared with simple "rule of thumb" strategies. This article presents our approach to developing Watsons game-playing strategies, comprising development of a faithful simulation model, and then using learning and Monte-Carlo methods within the simulator to optimize Watsons strategic decision-making. After giving a detailed description of each of our game-strategy algorithms, we then focus in particular on validating the accuracy of the simulators predictions, and documenting performance improvements using our methods. Quantitative performance benefits are shown with respect to both simple heuristic strategies, and actual human contestant performance in historical episodes. We further extend our analysis of human play to derive a number of valuable and counterintuitive examples illustrating how human contestants may improve their performance on the show.

READ FULL TEXT
research
11/30/2006

On Measuring the Impact of Human Actions in the Machine Learning of a Board Game's Playing Policies

We investigate systematically the impact of human intervention in the tr...
research
01/13/2020

Donald Duck Holiday Game: A numerical analysis of a Game of the Goose role-playing variant

The 1996 Donald Duck Holiday Game is a role-playing variant of the histo...
research
08/23/2023

Are ChatGPT and GPT-4 Good Poker Players? – A Pre-Flop Analysis

Since the introduction of ChatGPT and GPT-4, these models have been test...
research
05/03/2020

Autoencoders for strategic decision support

In the majority of executive domains, a notion of normality is involved ...
research
03/15/2012

Learning Game Representations from Data Using Rationality Constraints

While game theory is widely used to model strategic interactions, a natu...
research
02/03/2021

Simulation-Based Decision Making in the NFL using NFLSimulatoR

In this paper, we introduce an R software package for simulating plays a...
research
06/09/2010

Virtual information system on working area

In order to get strategic positioning for competition in business organi...

Please sign up or login with your details

Forgot password? Click here to reset